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HomeKey Stats Bristol

(Key stats about Bristol)
(Key stats about Bristol)
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   ggtitle("Average non-domestic gas consumption\nper customer in Bristol")
 
   ggtitle("Average non-domestic gas consumption\nper customer in Bristol")
 
</R>
 
</R>
 +
 +
The total energy bills for Bristol broken down by sector are:
  
 
{| class="wikitable"
 
{| class="wikitable"

Revision as of 16:45, 18 August 2015

Key stats about Bristol

2011 census Mid 2013 estimated
Population 428,100 437,500
Households 182,747 186,760

Bristol has an annual consumption of 1862 GWh (data from 2013) and a daily peak of around 307 MW during winter months.

Type Electrical Capacity Heat Capacity
Seabank 1,145 -
Renewable Electricity 53.9 -
Renewable Heat - 19.9
CHP 9.2 11.9
Total 1,208 32
REngine.php: 
in

pdf(rpdf, width=5, height=5) library(ggplot2) elec.consumption <- data.frame(Year = c(2009,2010,2011,2012,2013),

                              DomesticConsumption = c(718754856.9, 718735925.8,
                                                      718586755.1, 715382012,
                                                      709352993.9),
                              DomesticMPANs = c(189391, 191066, 192449,
                                                193322, 194083),
                              NonDomesticConsumption = c(1176217057,
                                                         1202799481,
                                                         1185903139,
                                                         1135575674,
                                                         1152307023),
                              NonDomesticMPANs = c(17500, 17444, 17350, 17552,
                                                   17590))

elec.consumption$Domestic <- elec.consumption$DomesticConsumption/elec.consumption$DomesticMPANs elec.consumption$NonDomestic <- elec.consumption$NonDomesticConsumption/elec.consumption$NonDomesticMPANs elec.consumption <- elec.consumption[,c(1,6,7)] ggplot(data=elec.consumption, aes(x=Year, y=Domestic)) +

 geom_bar(stat="identity", fill="#4D4D4D") +
 theme_bw() + 
 theme(panel.border = element_blank(), axis.line = element_line()) +
 theme(plot.title = element_text(vjust = 2)) +
 scale_y_continuous(expand = c(0,0)) + 
 xlab("Year") + ylab("Average consumption (kWh)")+
 ggtitle("Average domestic electricity consumption\nper customer in Bristol")
REngine.php: 
in

pdf(rpdf, width=5, height=5) library(ggplot2) elec.consumption <- data.frame(Year = c(2009,2010,2011,2012,2013),

                              DomesticConsumption = c(718754856.9, 718735925.8,
                                                      718586755.1, 715382012,
                                                      709352993.9),
                              DomesticMPANs = c(189391, 191066, 192449,
                                                193322, 194083),
                              NonDomesticConsumption = c(1176217057,
                                                         1202799481,
                                                         1185903139,
                                                         1135575674,
                                                         1152307023),
                              NonDomesticMPANs = c(17500, 17444, 17350, 17552,
                                                   17590))

elec.consumption$Domestic <- elec.consumption$DomesticConsumption/elec.consumption$DomesticMPANs elec.consumption$NonDomestic <- elec.consumption$NonDomesticConsumption/elec.consumption$NonDomesticMPANs elec.consumption <- elec.consumption[,c(1,6,7)] ggplot(data=elec.consumption, aes(x=Year, y=NonDomestic)) +

 geom_bar(stat="identity", fill="#4D4D4D") +
 theme_bw() + 
 theme(panel.border = element_blank(), axis.line = element_line()) +
 theme(plot.title = element_text(vjust = 2)) +
 scale_y_continuous(expand = c(0,0)) + 
 xlab("Year") + ylab("Average consumption (kWh)")+
 ggtitle("Average non-domestic electricity consumption\nper customer in Bristol")
REngine.php: 
in

pdf(rpdf, width=5, height=5) library(ggplot2) gas.consumption <- data.frame(Year = c(2009,2010,2011,2012,2013),

                              DomesticConsumption = c(2188753981, 2158524075,
                                                      2014008753, 2045449904,
                                                      2003430860),
                              DomesticMPANs = c(162126, 163573, 164780,
                                                168961, 167876),
                              NonDomesticConsumption = c(881539141,
                                                         832499075,
                                                         783226304,
                                                         783928929,
                                                         735031042),
                              NonDomesticMPANs = c(2013, 1975, 1915, 1974,
                                                   1966))

gas.consumption$Domestic <- gas.consumption$DomesticConsumption/gas.consumption$DomesticMPANs gas.consumption$NonDomestic <- gas.consumption$NonDomesticConsumption/gas.consumption$NonDomesticMPANs gas.consumption <- gas.consumption[,c(1,6,7)] ggplot(data=gas.consumption, aes(x=Year, y=Domestic)) +

 geom_bar(stat="identity", fill="#4D4D4D") +
 theme_bw() + 
 theme(panel.border = element_blank(), axis.line = element_line()) +
 theme(plot.title = element_text(vjust = 2)) +
 scale_y_continuous(expand = c(0,0)) + 
 xlab("Year") + ylab("Average consumption (kWh)")+
 ggtitle("Average domestic gas consumption\nper customer in Bristol")
REngine.php: 
in

pdf(rpdf, width=5, height=5) library(ggplot2) gas.consumption <- data.frame(Year = c(2009,2010,2011,2012,2013),

                              DomesticConsumption = c(2188753981, 2158524075,
                                                      2014008753, 2045449904,
                                                      2003430860),
                              DomesticMPANs = c(162126, 163573, 164780,
                                                168961, 167876),
                              NonDomesticConsumption = c(881539141,
                                                         832499075,
                                                         783226304,
                                                         783928929,
                                                         735031042),
                              NonDomesticMPANs = c(2013, 1975, 1915, 1974,
                                                   1966))

gas.consumption$Domestic <- gas.consumption$DomesticConsumption/gas.consumption$DomesticMPANs gas.consumption$NonDomestic <- gas.consumption$NonDomesticConsumption/gas.consumption$NonDomesticMPANs gas.consumption <- gas.consumption[,c(1,6,7)] ggplot(data=gas.consumption, aes(x=Year, y=NonDomestic)) +

 geom_bar(stat="identity", fill="#4D4D4D") +
 theme_bw() + 
 theme(panel.border = element_blank(), axis.line = element_line()) +
 theme(plot.title = element_text(vjust = 2)) +
 scale_y_continuous(expand = c(0,0)) + 
 xlab("Year") + ylab("Average consumption (kWh)")+
 ggtitle("Average non-domestic gas consumption\nper customer in Bristol")

The total energy bills for Bristol broken down by sector are:

Estimated bill, £ millions (excl. VAT)
Domestic electricity 110.78
Domestic gas 98.18
Non-domestic electricity 118.45
Non-domestic gas 22.23
 
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