Crossover Energy (datagedreven diensten) - Bob Mantel (Gemeente Amsterdam)
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Transcript of Crossover Energy (datagedreven diensten) - Bob Mantel (Gemeente Amsterdam)
AMSTERDAM SMART CITY1
Amsterdam Energy Atlas
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=
what
• Bringing data together and visualization
• Bringing new insight
• Start of collective assumptions for collaboration
• Decision support tool for professionals in the energy/planning sector
• Could it be more..?
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• New York / Hamburg /
Londen
• TU Delft • Amsterdam
+ =
how
whom
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etc
Why: get more precise
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• context1
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Amsterdam Energy Atlas
functions
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people
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ownership (housing)
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• Energy demand2
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electricity consumption
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gas consumption
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sustainable heating
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• Potential sources of renewal energy3
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sustainable electricity
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solar potential
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Heat and cold storage potential
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Geothermal potential
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Waste heat potential
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Supporting stakeholders decision making
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Resultaten: Balance city level
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Resultaten: verschil in aanpak per gebied
In Zuidoost:-great opportunities for the area to heat ‘itself’ by using local waste heat
In Nieuw-West:-great opportunities for housing to be self supporting in electricity
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results
• District planning: focus on heating and consultancy use data to develop
business case and collaboration with datacenter industry as heat producers
• Building sector searches for best changes for retrofit using the atlas
• Support of development of development strategy for a neighborhood: atlas
introduced sustainability and has let to an agreement between fibre optic com,
waste com, water com, solar com, citizens representatives and municipality to
modernize homes
• National funding sceme for innovative car batteries
->Not happened yet: city scale application of atlas…2015
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Verbruikskaarten (gas)
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Verbruikskaarten (stadsverwarming)
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Bestaande duurzame infrastructuur en opwek
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Potentiekaarten (zon)
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Potentiekaarten (water)
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Potentiekaarten (water)
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Potentiekaarten (water)
Wko gesloten Wko open geothermie
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Resultaat: stakeholders kunnen samen rekenen
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Resultaten: energie balans van de stad
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Resultaten: verschil in aanpak per gebied
In Zuidoost:-great opportunities for the area to heat ‘itself’ by using local waste heat
In Nieuw-West:-great opportunities for housing to be self supporting in electricity
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Resultaten: gebiedsanalyse zuidoost
Goals, theoretisch haalbaar:-warmte: alternatieven bronnen om doel te bereiken-elektrisch: optelsom van bronnen zijn nodig om doel te bereiken
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Resultaten: quickscan warmte business case
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Resultaten: ruimtelijke oriëntatie vehicle to grid
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Te combineren met afval, water, mobiliteit data
Domestic waste Industrial waste
Overlast binnen gebouwen Overlast openbare ruimte oplaadpunten
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Partijen die de atlas gebruiken
Powered by
Dat
a, w
aste
Domestic waste Industrial waste
Dat
a, e
nerg
y
consumption potential: hot and cold storage
potential: drinking water potential: waste heat
sustainable production potential: wind and solar
Dat
a, r
ainp
roof
Dat
a, e
-cha
rgin
g
Informed decision making: Quantitative simulation
The six steps in the web-based decision support tool
Analyze the city context
Analyze the city context Identify opportunitiesIdentify opportunities
Select and compare city data parameters
•Buildings, infrastructures, urban design, mobility•Socio-economic data, demographics•Renewable sources of energy
Select and compare city data parameters
•Buildings, infrastructures, urban design, mobility•Socio-economic data, demographics•Renewable sources of energy
Run simulation and determine impact
Run simulation and determine impact Analyze resultsAnalyze resultsDefine measuresDefine measures Allocate measuresAllocate measures
Analyze results of combined measures on KPIs
•Carbon reduction (versus costs)•Energy efficiency, renewables•Social, economic and environmental factors
Analyze results of combined measures on KPIs
•Carbon reduction (versus costs)•Energy efficiency, renewables•Social, economic and environmental factors
Insert city and district plans in the measure editor
•Insert measure from city and stakeholders in the tool•Allocate measure to a specific location (city, district, building)•Make different combinations of measures
Insert city and district plans in the measure editor
•Insert measure from city and stakeholders in the tool•Allocate measure to a specific location (city, district, building)•Make different combinations of measures
Measure editorLayered data comparison City Intelligence
The decision support helps in identifying opportunities, defining and allocating measures and determining potential impacts in order to make informed decisions
Informed decision making: Quantitative simulation
The six steps in the web-based decision support tool
1. Analyze the current situation
1. Analyze the current situation 2. Identify opportunities2. Identify opportunities
5. Allocate measures5. Allocate measures 6. Determine impact6. Determine impact
3. Set scenarios3. Set scenarios
4. Define measures4. Define measures
The decision support helps in identifying opportunities, defining and allocating measures and determining potential impacts in order to make informed decisions
1. Analyze the current situation
2. Identify opportunities
3. Set scenarios
4. Define measures
5. Allocate measures
6. Determine impact