Climate change policies in Basel: Difference between revisions

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{{encyclopedia|moderator=heta}}
{{assessment|moderator=heta}}
[[Category:Urgenche]]
[[Category:Urgenche]]
[[Category:Climate change]]
[[Category:Climate change]]
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==Question==
==Question==


What are plausible policies to the city of Basel to mitigate and adapt to climate change?
What are plausible policies to the city of Basel to mitigate and adapt to climate change? What are their climate and health impacts?


==Answer==
==Answer==


<t2b index="Row,Policy,Target year,Comparison year,Sector,Observation" locations="Target,Action,Description" unit="-">
* [http://en.opasnet.org/en-opwiki/index.php?title=Special:RTools&id=SY3LZ4RuO5f5Tq29 Full model run 23 Feb 2015]
1|Renewable energy|||Building|0.5|Increase in use of renewable energy sources|50% of the energy requirements for hot water must come from renewable sources in case of new buildings or renovations of heating systems.
 
2|Renewable energy|||Building|0|BAU|The use of renewable energy sources doesn't change.
==Rationale==
3|||||||
 
=== Dependencies ===
 
* [[Buildings in Basel]]
* [[Exposure to PM2.5 in Finland]]
* [[OpasnetUtils/Drafts]]
* [[Energy use of buildings]]
* [[Emission factors for burning processes]]
* [[Building model]]
* [[Health impact assessment]]
* [[Disease risk]]
* [[ERFs of environmental pollutants]]
* [[Burden of disease in Finland]]
* [[Climate change policies and health in Kuopio]] DALY weights etc
 
===Decisions===
 
See also decisions in [[Climate change policies and health in Kuopio]].
 
<t2b index='Decision maker,Decision,Option,Variable,Cell,Change,Unit' obs='Amount' desc='Description' unit='-'>
Builders|EfficiencyPolicy|BAU|efficiencyShares||Add||0|
Builders|EfficiencyPolicy|Active efficiency|efficiencyShares|Efficiency:Passive;Time:2020,2030|Add|fraction|0.25|All input must be given in units that are used in respective ovariables.
Builders|EfficiencyPolicy|Active efficiency|efficiencyShares|Efficiency:Passive;Time:2040,2050|Add|fraction|0.1|
Builders|EfficiencyPolicy|Active efficiency|efficiencyShares|Efficiency:Low-energy;Time:2020,2030|Add|fraction|-0.25|
Builders|EfficiencyPolicy|Active efficiency|efficiencyShares|Efficiency:Low-energy;Time:2040,2050|Add|fraction|-0.1|
Basel district heating|FuelPolicy|BAU|fuelShares||Add||0|
Basel district heating|FuelPolicy|Biofuel increase|fuelShares|Burner:Large fluidized bed;Fuel:Wood;Time:2020,2030,2040,2050|Add|fraction|0.2|
Basel district heating|FuelPolicy|Biofuel increase|fuelShares|Burner:Large fluidized bed;Fuel:Gas;Time:2020,2030,2040,2050|Add|fraction|-0.2|
Building owner|RenovationPolicy|BAU|renovationRate||Multiply|1 /a|1|Assumes BAU renovation rate = 1%/a for buildings >30 a old
Building owner|RenovationPolicy|Active renovation|renovationRate||Multiply|1 /a|2|
Building owner|RenovationPolicy|Total renovation|renovationRate||Multiply|1 /a|10|10%/a is 100 % in 10 a
</t2b>
</t2b>


==Rationale==
A previous version of a decision table is here:
 
{| {{prettytable}}
! Policy
! Target year
! Comparison year
! Sector
! Target
! Action
! Description
|----
| Renewable energy
|
|
| Waterworks
| 0.5
| Increase in use of renewable energy sources
| 50% of the energy requirements for hot water must come from renewable sources in case of new buildings or renovations of heating systems.
|----
| Renewable energy
|
|
| Waterworks
| 0
| BAU
| The use of renewable energy sources doesn't change.
|----
| Energy efficiency
|
|
| Building
|
| New buildings are made energy efficient
| Insulations of new buildings follow the requirements of whole Switzerland and new buildings must have a sunblind and thermal insulation for summer season.
|----
| Energy efficiency
|
|
| Building
|
| BAU
| The energy efficiency of new buildings is not improved.
|----
| Incentive levy
|
|
|
| 0.05
| 5% levy on electricity bills.
| 5% Levy on each electricity bill for support (royalty) of modernising insulation of buildings (energy efficiency), renewable energy and pilot &amp; demonstration buildings.
|----
| Incentive levy
|
|
|
| 0
| BAU
| There is no extra money for developing energy production and need.
|----
| Steering tax
|
|
| Taxation
|
| BAU
| Mid 1990s the steering tax was introduced to the same amount as energy-prices reduction to avoid people wasting electricity.
|----
| Solar power advancement
|
|
| Energy production
|
| The increase of solar power in energy poduction.
| Requires the regional energy supplier to accept an additional 2000 kWp of solar electricity annually at cost-covering prices and to feed this into its grid.
|----
| Solar power advancement
|
|
| Energy production
|
| BAU
| No more solar power is used in energy production.
|----
|}


The strategy of Basel’s climate policy for GHG-reduction is predominantly an energy policy:
The strategy of Basel’s climate policy for GHG-reduction is predominantly an energy policy:
Line 24: Line 137:


'''3.Save energy. Sufficiency.'''
'''3.Save energy. Sufficiency.'''
=== Model ===
==== Model version 2 ====
:'' This model version was developed for the updated manuscript in July 2015.
* [http://en.opasnet.org/en-opwiki/index.php?title=Special:RTools&id=si4rRn4JngIgFXhH Model run 23.7.2015] corrected model seems to work.
* [http://en.opasnet.org/en-opwiki/index.php?title=Special:RTools&id=HmuC0taf9PfB18t4 Archived model version 23.7.2015.] Objects saved with objects.put.
* [http://en.opasnet.org/en-opwiki/index.php?title=Special:RTools&id=AOqn0FIvJu1Wxidg Archived model run 24.7.2015] This version was used for the manuscript.
<rcode graphics=1 store=1>
library(OpasnetUtils)
library(ggplot2)
library(maptools)
library(RColorBrewer)
library(classInt)
#library(OpasnetUtilsExt)
library(RgoogleMaps)
### THIS CODE IS FROM PAGE [[Climate change policies in Basel]] (Op_en5480, code_name = "")
########### TECHNICAL PARAMETERS
openv.setN(0) # use medians instead of whole sampled distributions
objects.latest("Op_en6007", code_name = "answer") # [[OpasnetUtils/Drafts]] findrest
obstime <- Ovariable("obstime", data = data.frame(Obsyear = factor(seq(2010, 2050, 10), ordered = TRUE), Result = 1))
BS <- 24 # base_size for graph font
figstofile <- FALSE
saveobjects <- TRUE
finnish <- FALSE
suomenna <- function(ova) {
if(class(ova) == "ovariable") out <- ova@output else out <- ova
if("Heating" %in% colnames(out)) {
out$Heating <- as.factor(out$Heating)
levels(out$Heating)[levels(out$Heating) == "Long-distance heating"] <- "District"
}
if("Response" %in% colnames(out)) {
out$Response <- as.factor(out$Response)
levels(out$Response)[levels(out$Response) == "Cardiopulmonary mortality"] <- "Cardiopulmonary"
}
out$Time <- as.numeric(as.character(out$Time))
return(out)
}
###################### Decisions
decisions <- opbase.data('Op_en5480') # [[Climate change policies in Basel]]
DecisionTableParser(decisions)
# Remove previous decisions, if any.
forgetDecisions <- function() {
for(i in ls(envir = openv)) {
if("dec_check" %in% names(openv[[i]])) openv[[i]]$dec_check <- FALSE
}
return(cat("Decisions were forgotten.\n"))
}
forgetDecisions()
############################ Submodels and data
objects.latest("Op_en7044", code_name = "initiate") # [[Buildings in Basel]]
# Contains stockBuildings, changeBuildings, emissionLocations, heatingShares, renovationRate, renovationShares
objects.latest("Op_en6289", code_name = "buildingstest") # [[Building model]] # Generic building model.
### Energy and emissions
objects.latest("Op_en5488", code_name = "energyUseAnnual") # [[Energy use of buildings]] energyUse
objects.latest("Op_en5488", code_name = "efficiencyShares") # [[Energy use of buildings]]
objects.latest("Op_en2791", code_name = "emissionstest") # [[Emission factors for burning processes]] emissions
objects.latest("Op_en2791", code_name = "emissionFactors") # [[Emission factors for burning processes]]
objects.latest("Op_en7044", code_name = "fuelShares") # [[Buildings in Basel]]
objects.latest("Op_en5141", code_name = "fuelUse") # [[Energy balance]]
## Exposure and health assessment
objects.latest("Op_en5813", code_name = "exposure") # [[Intake fractions of PM]] uses Humbert iF as default.
objects.latest('Op_en2261', code_name = 'totcases') # [[Health impact assessment]] totcases and dependencies.
objects.latest('Op_en5461', code_name = 'DALYs') # [[Climate change policies and health in Kuopio]] DALYs, DW, L
population <- 192000 # Contains only the Basel city, i.e. assumes no exposure outside city.
# population <- 700000 # Contains the Basel metropolitan area, as that is exposed to PM2.5.
# Note: the population size does NOT affect the health impact as it cancels out. However, it DOES affect
# exposure estimates.
######################## MODEL CALCULATIONS
renovationRate <- EvalOutput(renovationRate) * 10 # Rates for 10-year periods
renovationShares <- EvalOutput(renovationShares)
stockBuildings <- EvalOutput(stockBuildings)
changeBuildings <- EvalOutput(changeBuildings)
buildings <- EvalOutput(buildings)
buildings@output$RenovationPolicy <- factor(
buildings@output$RenovationPolicy,
levels = c("BAU", "Active renovation", "Total renovation"),
ordered = TRUE
)
buildings@output$EfficiencyPolicy <- factor(
buildings@output$EfficiencyPolicy,
levels = c("BAU", "Active efficiency"),
ordered = TRUE
)
energyUse <- EvalOutput(energyUse)
fuelUse <- EvalOutput(fuelUse)
fuelUse <- fuelUse * 1E-3 *3600 # kWh -> MJ
emissions <- EvalOutput(emissions)
emissions@output$Time <- as.numeric(as.character(emissions@output$Time))
exposure <- EvalOutput(exposure)
exposure@output <- exposure@output[exposure@output$Area == "Urban" , ] # Basel is an urban area,
# rather than rural or average.
totcases <- EvalOutput(totcases)
totcases@output$Time <- as.numeric(as.character(totcases@output$Time))
totcases <- oapply(totcases, cols = c("Age", "Sex"), FUN = sum)
DALYs <- EvalOutput(DALYs)
############## OUTPUT GRAPHS AND TABLES
bui <- oapply(buildings * 1E-6, cols = c("City_area", "buildingsSource"), FUN = sum)
bui <- suomenna(truncateIndex(bui, cols = "Heating", bins = 3))
ggplot(subset(bui, EfficiencyPolicy == "BAU" & RenovationPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Heating)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by heating",
x = "Time",
y = "Floor area (M m2)"
)
if(figstofile) ggsave("Figure6.eps", width = 8, height = 7)
ggplot(subset(bui, EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Renovation)) + geom_bar(binwidth = 5) +
facet_grid(. ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by renovation policy",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Efficiency)) + geom_bar(binwidth = 5) +
facet_grid(. ~ EfficiencyPolicy) + theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by efficiency policy",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Heating)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Building)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel",
x = "Time",
y = "Floor area (M m2)"
)
# Plot energy need and emissions
hea <- oapply(energyUse * 1E-6, cols = c("City_area", "buildingsSource"), FUN = sum)
hea <- suomenna(truncateIndex(hea, cols = "Heating", bins = 3))
ggplot(hea, aes(x = Time, weight = energyUseResult, fill = Heating)) + geom_bar(binwidth = 5) +
facet_wrap( ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Energy used in heating in Basel",
x = "Time",
y = "Heating energy (GWh /a)"
)
emis <- suomenna(truncateIndex(emissions, cols = "Emission_site", bins = 5))
ggplot(subset(emis, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Emission_site)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ RenovationPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
ggplot(subset(emis, EfficiencyPolicy == "BAU" & RenovationPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Fuel)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ FuelPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
ggplot(subset(emis, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Fuel)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ RenovationPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
expo <- suomenna(exposure)
ggplot(subset(expo, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = exposureResult, fill = Heating)) + geom_bar(binwidth = 5) + facet_grid(Area ~ Emission_height) + theme_gray(base_size = BS) +
labs(
title = "Exposure to PM2.5 from heating in Basel",
x = "Time",
y = "Average PM2.5 (µg/m3)"
)
ggplot(subset(expo, EfficiencyPolicy == "BAU"), aes(x = Time, weight = exposureResult, fill = Heating)) + geom_bar(binwidth = 5) + facet_grid(FuelPolicy ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Exposure to PM2.5 from heating in Basel",
x = "Time",
y = "Average PM2.5 (µg/m3)"
)
cases <- suomenna(truncateIndex(totcases, cols = "Heating", bins = 3))
ggplot(subset(cases, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = totcasesResult, fill = Heating))+geom_bar(binwidth = 5) +
facet_grid(Response ~ RenovationPolicy) +
scale_x_continuous(breaks = c(2010, 2030, 2050)) +
theme_gray(base_size = BS) +
labs(
title = "Health effects of PM2.5 from heating in Basel",
x = "Time",
y = "Health effects (deaths /a)"
)
if(figstofile) ggsave("Figure8.eps", width = 11, height = 7)
cat("Total DALYs/a by different combinations of policy options.\n")
dal <- suomenna(DALYs)
dal <- subset(dal, Response == "Total mortality")
oprint(aggregate(dal["DALYsResult"], by = dal[c("Time", "EfficiencyPolicy", "RenovationPolicy", "FuelPolicy")], FUN = sum))
ggplot(subset(dal, FuelPolicy == "BAU"), aes(x = Time, weight = DALYsResult, fill = Heating))+geom_bar(binwidth = 5) +
facet_grid(EfficiencyPolicy ~ RenovationPolicy) +
theme_gray(base_size = BS) +
labs(
title = "Health effects in DALYs of PM2.5 from heating in Basel",
x = "Time",
y = "Health effects (DALY /a)"
)
ggplot(subset(dal, Time == 2030), aes(x = FuelPolicy, weight = DALYsResult, fill = Heating))+geom_bar() +
facet_grid(EfficiencyPolicy ~ RenovationPolicy) +
theme_gray(base_size = BS) +
labs(
title = "Health effects in DALYs of PM2.5 from heating in Basel 2030",
x = "Biofuel policy in district heating",
y = "Health effects (DALY /a)"
)
if(TRUE) {
koord <- tidy(opbase.data("Op_en7044", subset = "Locations of postal codes"))
colnames(koord) <- c("Emission_site", "X", "Y")
koord$Result <- 1
koord <- Ovariable("koord", output = koord, marginal = c(TRUE, TRUE, TRUE, FALSE))
emis <- emissions * koord
emis@output <- subset(emis@output,
RenovationPolicy == "BAU" &
EfficiencyPolicy == "BAU" &
FuelPolicy == "BAU" &
Pollutant == "PM2.5" &
Time == "2020"
)
emis <- oapply(emis, INDEX = c("Emission_site", "X", "Y"), FUN = sum)
MyRmap(
ova2spat(
emis,
coord = c("X", "Y"),
proj4string = "+init=epsg:21781"
), # Swiss Land Survey uses  CH1903
# http://spatialreference.org/ref/epsg/21782/
# http://en.wikipedia.org/wiki/Swiss_coordinate_system
plotvar = "Result",
legend_title = "PM2.5 emissions (ton/a)",
numbins = 4,
pch = 19,
cex = sqrt(result(emis)) * 3
)
# Map saved manually to .eps with width = 1280, height = 960 px.
}
if(saveobjects) {
objects.put(list = ls())
cat(c("All objects archived. Write down the key of the run to retrieve them with objects.get. Objects: ",
ls(), "\n"))
}
</rcode>
==== Model version 1 ====
:''This model version was used for the original manuscript in spring 2015.
* [http://en.opasnet.org/en-opwiki/index.php?title=Special:RTools&id=Ds8RSEA1u5NfBNSc Corrected run 10th March 2015]
<rcode graphics=1 store=0>
library(OpasnetUtils)
library(ggplot2)
library(maptools)
library(RColorBrewer)
library(classInt)
#library(OpasnetUtilsExt)
library(RgoogleMaps)
### THIS CODE IS FROM PAGE [[Climate change policies in Basel]] (Op_en5480, code_name = "")
openv.setN(0) # use medians instead of whole sampled distributions
#####!---------------------------------------------
objects.latest("Op_en6007", code_name = "answer") # [[OpasnetUtils/Drafts]] findrest
#####i---------------------------------------------
obstime <- data.frame(Startyear = c(2010, 2030)) # Observation years must be defined for an assessment.
BS <- 24
heating_before <- FALSE # Should heatingShares be calculated before renovate and timepoints (or after)?
efficiency_before <- TRUE # Should efficiencyShares be calculated before renovate and timepoints (or after)?
dummy <- 1
figstofile <- FALSE
###################### Decisions
decisions <- opbase.data('Op_en5480') # [[Climate change policies in Basel]]
DecisionTableParser(decisions)
# Remove previous decisions, if any.
rm(
"buildings",
"stockBuildings",
"changeBuildings",
"efficiencyShares",
"energyUse",
"heatingShares",
"renovationShares",
"renovationRate",
"fuelShares",
envir = openv
)
############################ City-specific data
####!------------------------------------------------
objects.latest("Op_en7044", code_name = "initiate") # [[Buildings in Basel]]
####i------------------------------------------------
renovationRate <- EvalOutput(renovationRate) * 20 # Rates for 20-year periods
#################### Energy use (needed for buildings submodel)
####!------------------------------------------------
objects.latest("Op_en5488", code_name = "initiate") # [[Energy use of buildings]]
####i------------------------------------------------
###################### Actual building model
# The building stock is measured as m^2 floor area.
####!------------------------------------------------
objects.latest("Op_en6289", code_name = "initiate") # [[Building model]] # Generic building model.
####i------------------------------------------------
buildings <- EvalOutput(buildings)
buildings@output$RenovationPolicy <- factor(
buildings@output$RenovationPolicy,
levels = c("BAU", "Active renovation", "Total renovation"),
ordered = TRUE
)
buildings@output$EfficiencyPolicy <- factor(
buildings@output$EfficiencyPolicy,
levels = c("BAU", "Active efficiency"),
ordered = TRUE
)
bui <- oapply(buildings * 1E-6, cols = c("City_area", "buildingsSource"), FUN = sum)
bui <- truncateIndex(bui, cols = "Heating", bins = 4)@output
levels(bui$Heating)[levels(bui$Heating) == "Long-distance heating"] <- "District heating"
ggplot(subset(bui, EfficiencyPolicy == "BAU" & RenovationPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Heating)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by heating",
x = "Time",
y = "Floor area (M m2)"
)
if(figstofile) ggsave("Figure6.eps", width = 8, height = 7)
ggplot(subset(bui, EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Renovation)) + geom_bar(binwidth = 5) +
facet_grid(. ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by renovation policy",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Efficiency)) + geom_bar(binwidth = 5) +
facet_grid(. ~ EfficiencyPolicy) + theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel by efficiency policy",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Heating)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel",
x = "Time",
y = "Floor area (M m2)"
)
ggplot(subset(bui, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU"), aes(x = Time, weight = buildingsResult, fill = Building)) + geom_bar(binwidth = 5) +
theme_gray(base_size = BS) +
labs(
title = "Building stock in Basel",
x = "Time",
y = "Floor area (M m2)"
)
###################### Energy and emissions
####!------------------------------------------------
objects.latest("Op_en2791", code_name = "initiate") # [[Emission factors for burning processes]]
####i------------------------------------------------
heatingEnergy <- EvalOutput(heatingEnergy)
################ Transport and fate
####!------------------------------------------------
iF <- Ovariable("iF", ddata = "Op_en3435", subset = "Intake fractions of PM")
# [[Exposure to PM2.5 in Finland]] Humbert et al 2011 data
####i------------------------------------------------
colnames(iF@data) <- gsub("[ \\.]", "_", colnames(iF@data))
iF@data$iFResult <- iF@data$iFResult * 1E-6
emissions <- EvalOutput(emissions)
emissions@output$Time <- as.numeric(as.character(emissions@output$Time))
# Plot energy need and emissions
hea <- oapply(heatingEnergy * 1E-6, cols = c("City_area", "buildingsSource"), FUN = sum)
hea <- truncateIndex(hea, cols = "Heating", bins = 4)@output
levels(hea$Heating)[levels(hea$Heating) == "Long-distance heating"] <- "District heating"
ggplot(hea, aes(x = Time, weight = heatingEnergyResult * 1E-6, fill = Heating)) + geom_bar(binwidth = 5) +
facet_wrap( ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Energy used in heating in Basel",
x = "Time",
y = "Heating energy (GWh /a)"
)
emis <- truncateIndex(emissions, cols = "Emission_site", bins = 5)@output
ggplot(subset(emis, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Emission_site)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ RenovationPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
ggplot(subset(emis, EfficiencyPolicy == "BAU" & RenovationPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Fuel)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ FuelPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
ggplot(subset(emis, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = emissionsResult, fill = Fuel)) + geom_bar(binwidth = 5) +
facet_grid(Pollutant ~ RenovationPolicy, scale = "free_y") + theme_gray(base_size = BS) +
labs(
title = "Emissions from heating in Basel",
x = "Time",
y = "Emissions (ton /a)"
)
###################### Health assessment
####!------------------------------------------------
objects.latest('Op_en2261', code_name = 'initiate') # [[Health impact assessment]] dose, RR, totcases.
objects.latest('Op_en5917', code_name = 'initiate') # [[Disease risk]] disincidence
objects.latest('Op_en5827', code_name = 'initiate') # [[ERFs of environmental pollutants]] ERF, threshold
#objects.latest('Op_en5453', code_name = 'initiate') # [[Burden of disease in Finland]] BoD
directs <- tidy(opbase.data("Op_en5461", subset = "Direct inputs"), direction = "wide") # [[Climate change policies and health in Kuopio]]
####i------------------------------------------------
colnames(directs) <- gsub(" ", "_", colnames(directs))
### Use these population and iF values in health impact assessment. Why?
frexposed <- 1 # fraction of population that is exposed
bgexposure <- 0 # Background exposure to an agent (a level below which you cannot get in practice)
BW <- 70 # Body weight (is needed for RR calculations although it is irrelevant for PM2.5)
population <- 192000 # Contains only the Basel city, i.e. assumes no exposure outside city.
# population <- 700000 # Contains the Basel metropolitan area, as that is exposed to PM2.5.
# Note: the population size does NOT affect the health impact as it cancels out. However, it DOES affect
# exposure estimates.
exposure <- EvalOutput(exposure)
ggplot(subset(exposure@output, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = exposureResult, fill = Heating)) + geom_bar(binwidth = 5) + facet_grid(Area ~ Emission_height) + theme_gray(base_size = BS) +
labs(
title = "Exposure to PM2.5 from heating in Basel",
x = "Time",
y = "Average PM2.5 (µg/m3)"
)
exposure@output <- exposure@output[exposure@output$Area == "Urban" , ] # Basel is an urban area,
# rather than rural or urban.
ggplot(subset(exposure@output, EfficiencyPolicy == "BAU"), aes(x = Time, weight = exposureResult, fill = Heating)) + geom_bar(binwidth = 5) + facet_grid(FuelPolicy ~ RenovationPolicy) + theme_gray(base_size = BS) +
labs(
title = "Exposure to PM2.5 from heating in Basel",
x = "Time",
y = "Average PM2.5 (µg/m3)"
)
totcases <- EvalOutput(totcases)
totcases@output$Time <- as.numeric(as.character(totcases@output$Time))
totcases <- oapply(totcases, cols = c("Age", "Sex"), FUN = sum)
totcases <- truncateIndex(totcases, cols = "Heating", bins = 5)
levels(totcases@output$Heating)[levels(totcases@output$Heating) == "Long-distance heating"] <- "District heating"
ggplot(subset(totcases@output, EfficiencyPolicy == "BAU" & FuelPolicy == "BAU"), aes(x = Time, weight = totcasesResult, fill = Heating))+geom_bar(binwidth = 5) +
facet_grid(Trait ~ RenovationPolicy) +
theme_gray(base_size = BS) +
labs(
title = "Health effects of PM2.5 from heating in Basel",
x = "Time",
y = "Health effects (deaths /a)"
)
if(figstofile) ggsave("Figure8.eps", width = 11, height = 7)
DW <- Ovariable("DW", data = data.frame(directs["Trait"], Result = directs$DW))
L <- Ovariable("L", data = data.frame(directs["Trait"], Result = directs$L))
DALYs <- totcases * DW * L
cat("Total DALYs/a by different combinations of policy options.\n")
temp <- DALYs
temp@output <- subset(
temp@output,
as.character(Time) %in% c("2010", "2030") & Trait == "Total mortality"
)
oprint(oapply(temp, INDEX = c("Time", "EfficiencyPolicy", "RenovationPolicy", "FuelPolicy"), FUN = sum))
ggplot(subset(DALYs@output, FuelPolicy == "BAU" & Trait == "Total mortality"), aes(x = Time, weight = Result, fill = Heating))+geom_bar(binwidth = 5) +
facet_grid(EfficiencyPolicy ~ RenovationPolicy) +
theme_gray(base_size = BS) +
labs(
title = "Health effects in DALYs of PM2.5 from heating in Basel",
x = "Time",
y = "Health effects (DALY /a)"
)
ggplot(subset(DALYs@output, Time == 2030 & Trait == "Total mortality"), aes(x = FuelPolicy, weight = Result, fill = Heating))+geom_bar() +
facet_grid(EfficiencyPolicy ~ RenovationPolicy) +
theme_gray(base_size = BS) +
labs(
title = "Health effects in DALYs of PM2.5 from heating in Basel 2030",
x = "Biofuel policy in district heating",
y = "Health effects (DALY /a)"
)
koord <- tidy(opbase.data("Op_en7044", subset = "Locations of postal codes"))
colnames(koord) <- c("Emission_site", "X", "Y")
koord$Result <- 1
koord <- Ovariable("koord", output = koord, marginal = c(TRUE, TRUE, TRUE, FALSE))
emis <- emissions * koord
emis@output <- subset(emis@output, RenovationPolicy == "BAU" & EfficiencyPolicy == "BAU" & FuelPolicy == "BAU" & Pollutant == "PM2.5")
emis <- oapply(emis, INDEX = c("Emission_site", "X", "Y"), FUN = sum)
MyRmap(
ova2spat(
emis,
coord = c("X", "Y"),
proj4string = "+init=epsg:21781"
), # Swiss Land Survey uses  CH1903
# http://spatialreference.org/ref/epsg/21782/
# http://en.wikipedia.org/wiki/Swiss_coordinate_system
plotvar = "Result",
legend_title = "PM2.5 emissions (ton/a)",
numbins = 4,
pch = 19,
cex = sqrt(result(emis)) * 3
)
# Map saved manually to .eps with width = 1280, height = 960 px.
</rcode>


===5 pillars of Basel-City’s energy policy===
===5 pillars of Basel-City’s energy policy===


====1. Conventional law ====
'''1. Conventional law  
 
*Buildings:
*Buildings:
**Most stringent requirements in whole Switzerland regarding the insulation of new building (wall, roof, windows).
**Most stringent requirements in whole Switzerland regarding the insulation of new building (wall, roof, windows).
Line 36: Line 763:
**etc.
**etc.


====2. An incentive levy ====
'''2. An incentive levy  
 
*5% Levy on each electricity bill for support (royalty) of:  
*5% Levy on each electricity bill for support (royalty) of:  
**Modernising insulation of buildings (energy efficiency)
**Modernising insulation of buildings (energy efficiency)
Line 42: Line 770:
**Pilot & Demonstration Buildings
**Pilot & Demonstration Buildings


====3. A steering tax on electricity====
''' 3. A steering tax on electricity
 
*Mid 1990s the steering tax was introduced to the same amount as energy-prices reduction to avoid people wasting electricity
*Mid 1990s the steering tax was introduced to the same amount as energy-prices reduction to avoid people wasting electricity
*The revenue is paid back; household-bonus & company-bonus
*The revenue is paid back; household-bonus & company-bonus
4.Advancement in solar power  
 
''' 4.Advancement in solar power
 
*Requires the regional energy supplier to accept an additional 2000 kWp of solar electricity annually at cost-covering prices and to feed this into its grid.  
*Requires the regional energy supplier to accept an additional 2000 kWp of solar electricity annually at cost-covering prices and to feed this into its grid.  


====5. 2000-Watt-Society and Partnerships====
''' 5. 2000-Watt-Society and Partnerships
 
*A Project by the Canton of Basel-City and Novatlantis
*A Project by the Canton of Basel-City and Novatlantis
*Main focus of the 2000-watt-society:
*Main focus of the 2000-watt-society:
Line 70: Line 802:
***Minergy Standard (shell) for renovation-buildings
***Minergy Standard (shell) for renovation-buildings


===Air pollution control with influence on GHG-reduction===
=== Other policies ===
 
'''Air pollution control with influence on GHG-reduction
 
Most important political instrument:
Most important political instrument:
*Clean air regulation of Switzerland
*Clean air regulation of Switzerland
*Clean air plan of Basel-City and Country
*Clean air plan of Basel-City and Country


===Clean air plan of Basel-city and country===
'''Clean air plan of Basel-city and country
 
Expamples with influence on GHG-reduction in target traffic:
Expamples with influence on GHG-reduction in target traffic:
*Ecological motor vehicle tax
*Ecological motor vehicle tax
Line 83: Line 819:
*Regulations and limitations in prestressed air polluted city quarters
*Regulations and limitations in prestressed air polluted city quarters


===Infrastructure enhancing climate policy of Basel===
'''Infrastructure enhancing climate policy of Basel
 
*Waste incinerator
*Waste incinerator
**Integrated into the district heating. Function as a thermic power plant: 200,000 tons of waste supply our city with the power the equivalent of about 50,000 tons of oil.
**Integrated into the district heating. Function as a thermic power plant: 200,000 tons of waste supply our city with the power the equivalent of about 50,000 tons of oil.
Line 100: Line 837:
**Basel is not allowed to consume nuclear power because due to law
**Basel is not allowed to consume nuclear power because due to law


===Most important shifts of climate change which are expected in Switzerland till 2050===
'''Most important shifts of climate change which are expected in Switzerland till 2050
 
*In winter, fall and springtime temperature will increase around 2°C in summer around 3°C
*In winter, fall and springtime temperature will increase around 2°C in summer around 3°C
*Decrease of Rainfall in summer of 20% and increase of 10% in winter
*Decrease of Rainfall in summer of 20% and increase of 10% in winter
*Generally more heatwaves, dry periods, strong rainfalls and floods
*Generally more heatwaves, dry periods, strong rainfalls and floods


===The Canton Basel-Stadt is most affected by:===
'''The Canton Basel-Stadt is most affected by:
 
*Heat wave hot-spot-effects in the City (“heat-island”)
*Heat wave hot-spot-effects in the City (“heat-island”)
*Rising ground-water temperatures, which decreases the possibility to use ground-water only for cooling-process.
*Rising ground-water temperatures, which decreases the possibility to use ground-water only for cooling-process.
Line 113: Line 852:


{{Urgenche}}
{{Urgenche}}
* [http://www.plumbingconnection.com.au/article/basel-hot-city Basel's district heating system]
** [http://www.endswasteandbioenergy.com/article/1326042/iwb-plans-second-basel-biomass-fired-chp-facility A 2014 plan to build a new biomass-based CHP plant in Basel]


==Key words==
==Key words==

Latest revision as of 16:52, 11 January 2016

Question

What are plausible policies to the city of Basel to mitigate and adapt to climate change? What are their climate and health impacts?

Answer

Rationale

Dependencies

Decisions

See also decisions in Climate change policies and health in Kuopio.

Climate change policies in Basel(-)
ObsDecision makerDecisionOptionVariableCellChangeUnitAmountDescription
1BuildersEfficiencyPolicyBAUefficiencySharesAdd0
2BuildersEfficiencyPolicyActive efficiencyefficiencySharesEfficiency:Passive;Time:2020,2030Addfraction0.25All input must be given in units that are used in respective ovariables.
3BuildersEfficiencyPolicyActive efficiencyefficiencySharesEfficiency:Passive;Time:2040,2050Addfraction0.1
4BuildersEfficiencyPolicyActive efficiencyefficiencySharesEfficiency:Low-energy;Time:2020,2030Addfraction-0.25
5BuildersEfficiencyPolicyActive efficiencyefficiencySharesEfficiency:Low-energy;Time:2040,2050Addfraction-0.1
6Basel district heatingFuelPolicyBAUfuelSharesAdd0
7Basel district heatingFuelPolicyBiofuel increasefuelSharesBurner:Large fluidized bed;Fuel:Wood;Time:2020,2030,2040,2050Addfraction0.2
8Basel district heatingFuelPolicyBiofuel increasefuelSharesBurner:Large fluidized bed;Fuel:Gas;Time:2020,2030,2040,2050Addfraction-0.2
9Building ownerRenovationPolicyBAUrenovationRateMultiply1 /a1Assumes BAU renovation rate = 1%/a for buildings >30 a old
10Building ownerRenovationPolicyActive renovationrenovationRateMultiply1 /a2
11Building ownerRenovationPolicyTotal renovationrenovationRateMultiply1 /a1010%/a is 100 % in 10 a

A previous version of a decision table is here:

Policy Target year Comparison year Sector Target Action Description
Renewable energy Waterworks 0.5 Increase in use of renewable energy sources 50% of the energy requirements for hot water must come from renewable sources in case of new buildings or renovations of heating systems.
Renewable energy Waterworks 0 BAU The use of renewable energy sources doesn't change.
Energy efficiency Building New buildings are made energy efficient Insulations of new buildings follow the requirements of whole Switzerland and new buildings must have a sunblind and thermal insulation for summer season.
Energy efficiency Building BAU The energy efficiency of new buildings is not improved.
Incentive levy 0.05 5% levy on electricity bills. 5% Levy on each electricity bill for support (royalty) of modernising insulation of buildings (energy efficiency), renewable energy and pilot & demonstration buildings.
Incentive levy 0 BAU There is no extra money for developing energy production and need.
Steering tax Taxation BAU Mid 1990s the steering tax was introduced to the same amount as energy-prices reduction to avoid people wasting electricity.
Solar power advancement Energy production The increase of solar power in energy poduction. Requires the regional energy supplier to accept an additional 2000 kWp of solar electricity annually at cost-covering prices and to feed this into its grid.
Solar power advancement Energy production BAU No more solar power is used in energy production.

The strategy of Basel’s climate policy for GHG-reduction is predominantly an energy policy:

1.Use energy efficiently.

2.Advocate renewable energy.

3.Save energy. Sufficiency.

Model

Model version 2

This model version was developed for the updated manuscript in July 2015.

+ Show code

Model version 1

This model version was used for the original manuscript in spring 2015.

+ Show code

5 pillars of Basel-City’s energy policy

1. Conventional law

  • Buildings:
    • Most stringent requirements in whole Switzerland regarding the insulation of new building (wall, roof, windows).
    • 50% of the energy requirements for hot water must come from renewable sources in case of new buildings or renovations of heating systems
    • New buildings must have a sunblind and thermal insulation for summer season
  • Industry:
    • Large-scale electricity consumer in industry can be ask to do a safe-energy-analyse and do some ameliorations.
    • etc.

2. An incentive levy

  • 5% Levy on each electricity bill for support (royalty) of:
    • Modernising insulation of buildings (energy efficiency)
    • Renewable energy
    • Pilot & Demonstration Buildings

3. A steering tax on electricity

  • Mid 1990s the steering tax was introduced to the same amount as energy-prices reduction to avoid people wasting electricity
  • The revenue is paid back; household-bonus & company-bonus

4.Advancement in solar power

  • Requires the regional energy supplier to accept an additional 2000 kWp of solar electricity annually at cost-covering prices and to feed this into its grid.

5. 2000-Watt-Society and Partnerships

  • A Project by the Canton of Basel-City and Novatlantis
  • Main focus of the 2000-watt-society:
    • buildings
    • mobility
      • “Near Zero Emission Vehicle"
      • “Clean Engine Vehicle“
      • Hydrogen-Driven Municipal Vehicle (hy.muve); a oxygen road sweeping vehicle
      • 100 ecological biogas taxis
      • e-mobility
        • Testing e-mobility
        • event packet for companies
        • carefree packet for companies and administration
        • e-sharing for private persons
        • Development strategy for e-bikes
        • Energy-tours www.energy-tours.bs.ch
    • urban development
    • carbon neutral administration
      • Effect as a prototype (paradigm)
      • Minergy P-Standard (shell and technical facilities) for new construction-buildings
      • Minergy Standard (shell) for renovation-buildings

Other policies

Air pollution control with influence on GHG-reduction

Most important political instrument:

  • Clean air regulation of Switzerland
  • Clean air plan of Basel-City and Country

Clean air plan of Basel-city and country

Expamples with influence on GHG-reduction in target traffic:

  • Ecological motor vehicle tax
  • Tightening commercial control over parking space
  • Mobility management and agglomeration program (urban planning)
  • Public intensive infrastructures are obligated to decrease their traffic intensity
  • Regulations and limitations in prestressed air polluted city quarters

Infrastructure enhancing climate policy of Basel

  • Waste incinerator
    • Integrated into the district heating. Function as a thermic power plant: 200,000 tons of waste supply our city with the power the equivalent of about 50,000 tons of oil.
    • Equipped with the most effective smoke exhaust filter systems
  • Wood-fire power station
    • Integrated into the district heating. Function as a thermic power plant.
    • Substitutes about 11‘000 tons of oil
  • Aquifere of the community Riehen*
    • A geothermal power station with deepgroundwater of 66 °C connected together with the block heat and power plant into the community heating of Riehen.
  • Deep heat mining project
    • This project had to be stopped unfortunately because the drillings have caused an earthquake on 2006.
  • Electricity by the IWB
    • Electricity in Basel is 100% renewable.
    • 99 % is hydraulic energy.
    • The rest is solar energy or wind power.
    • Basel is not allowed to consume nuclear power because due to law

Most important shifts of climate change which are expected in Switzerland till 2050

  • In winter, fall and springtime temperature will increase around 2°C in summer around 3°C
  • Decrease of Rainfall in summer of 20% and increase of 10% in winter
  • Generally more heatwaves, dry periods, strong rainfalls and floods

The Canton Basel-Stadt is most affected by:

  • Heat wave hot-spot-effects in the City (“heat-island”)
  • Rising ground-water temperatures, which decreases the possibility to use ground-water only for cooling-process.
  • Rising temperatures of the river Rhein during heat-waves, which results that industry is not possible to cool their production-process with Rhein water (fish kill).

See also

Urgenche research project 2011 - 2014: city-level climate change mitigation
Urgenche pages

Urgenche main page · Category:Urgenche · Urgenche project page (password-protected)

Relevant data
Building stock data in Urgenche‎ · Building regulations in Finland · Concentration-response to PM2.5 · Emission factors for burning processes · ERF of indoor dampness on respiratory health effects · ERF of several environmental pollutions · General criteria for land use · Indoor environment quality (IEQ) factors · Intake fractions of PM · Land use in Urgenche · Land use and boundary in Urgenche · Energy use of buildings

Relevant methods
Building model · Energy balance · Health impact assessment · Opasnet map · Help:Drawing graphs · OpasnetUtils‎ · Recommended R functions‎ · Using summary tables‎

City Kuopio
Climate change policies and health in Kuopio (assessment) · Climate change policies in Kuopio (plausible city-level climate policies) · Health impacts of energy consumption in Kuopio · Building stock in Kuopio · Cost curves for energy (prioritization of options) · Energy balance in Kuopio (energy data) · Energy consumption and GHG emissions in Kuopio by sector · Energy consumption classes (categorisation) · Energy consumption of heating of buildings in Kuopio · Energy transformations (energy production and use processes) · Fuels used by Haapaniemi energy plant · Greenhouse gas emissions in Kuopio · Haapaniemi energy plant in Kuopio · Land use in Kuopio · Building data availability in Kuopio · Password-protected pages: File:Heat use in Kuopio.csv · Kuopio housing

City Basel
Buildings in Basel (password-protected)

Energy balances
Energy balance in Basel · Energy balance in Kuopio · Energy balance in Stuttgart · Energy balance in Suzhou


Key words

The climate change, Politics, Basel, Urgenche

References