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@PHDTHESIS{Kotzur:858675,
author = {Kotzur, Leander},
title = {{F}uture {G}rid {L}oad of the {R}esidential {B}uilding
{S}ector},
volume = {442},
school = {RWTH Aachen},
type = {Dr.},
address = {Jülich},
publisher = {Forschungszentrum Jülich GmbH Zentralbibliothek, Verlag},
reportid = {FZJ-2018-07520},
isbn = {978-3-95806-370-9},
series = {Schriften des Forschungszentrums Jülich Reihe Energie $\&$
Umwelt / Energy $\&$ Environment},
pages = {xxi, 213 S.},
year = {2018},
note = {RWTH Aachen, Diss., 2018},
abstract = {The installation and operation of distributed energy
resources in the form of photovoltaics, co-generation units,
or batteries, and the electrification of the heat supply are
seen as promising options to reduce greenhouse gas emissions
of residential buildings. Nevertheless, their uptake
significantly changes the interaction of the residential
building stock with the electricity grid and the centralized
supply infrastructure and questions their current design.
Therefore, the objective of this work is to derive the
future residential electricity grid load spatially and
temporally resolved to define a decision basis for future
grid and market designs. In order to generally predict the
future structure, design and operation of residential supply
systems and efficiency measures, a Mixed-Integer Linear
Program is introduced that minimizes the total annual energy
supply cost of a single buildings since the technology
adoption is mainly economically driven. The minimization of
the greenhouse gas footprint can be added as second
objective. The optimization model accounts for the temporal
occupant activities, their related device usage, tolerated
room temperature levels, limited roof capacities, or
different levels of additional insulation. Since the variety
of investment and operation options make the model
computationally challenging, clustering based times series
aggregation techniques are developed and introduced to
reduce the complexity of the model. A novel aggregation
algorithm based on Mixed-Integer Quadratic Programs is
introduced to scale the technology adoption and operation
from the single building perspective to a nationwide scope
by creating a spatially resolved archetype building stock
from Census data and building databases. 200 archetype
buildings are concluded to sufficiently represent the
diversity of building types in the different municipalities
in Germany. These archetype buildings are optimized for the
weather years 2010 until 2015 and the results are validated
to residential energy consumption value from public
statistics, whereby the regional demand impact of different
weather years is illustrated. Afterwards, a scenario frame
for 2050 is defined and the buildings are optimized to reach
a carbon neutral building stock with minimal cost. As
result, at least 130 GWof photovoltaic are deployed and
above 90 TWh/a of the generated electricity are used for
self-consumption in the residential buildings. Nevertheless,
the total demand for electricity significantly increases
since 17 to 26 GWel of heat pumps are installed to replace
combustion boilers, while only 30 $\%$ of space heat are
saved by refurbishment measures. The spatially resolved
archetype building stock allows new insights: The urban
areas can compensate the increasing electricity demand by
efficient co-generation units, e.g. in form of fuel cells.
Nevertheless, those are not cost efficient in the rural
areas where the photovoltaic generation and the heatpump
demand temporally disjoin, resulting in a doubling of the
peak electricity loadin the winter hours.},
cin = {IEK-3},
cid = {I:(DE-Juel1)IEK-3-20101013},
pnm = {134 - Electrolysis and Hydrogen (POF3-134)},
pid = {G:(DE-HGF)POF3-134},
typ = {PUB:(DE-HGF)3 / PUB:(DE-HGF)11},
urn = {urn:nbn:de:0001-2019020614},
url = {https://juser.fz-juelich.de/record/858675},
}