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Despite the unstoppable global drive towards electric mobility, the electrification of sub-Saharan Africa’s ubiquitous informal multi-passenger minibus taxis raises substantial concerns. This is due to a constrained electricity system, both in terms of generation capacity and distribution networks. Without careful planning and mitigation, the additional load of charging hundreds of thousands of electric minibus taxis during peak demand times could prove catastrophic. This paper assesses the impact of charging 202 of these taxis in Johannesburg, South Africa. The potential of using external stationary battery storage and solar PV generation is assessed to reduce both peak grid demand and total energy drawn from the grid. With the addition of stationary battery storage of an equivalent of 60 kWh/taxi and a solar plant of an equivalent of 9.45 kWpk/taxi, the grid load impact is reduced by 66%, from 12 kW/taxi to 4 kW/taxi, and the daily grid energy by 58% from 87 kWh/taxi to 47 kWh/taxi. The country’s dependence on coal to generate electricity, including the solar PV supply, also reduces greenhouse gas emissions by 58%.
In the course of a more intensive energy generation from regenerative sources, an increased number of energy storages is required. In addition to the widespread means of storing electric energy, storing energy thermally can contribute significantly. However, limited research exists on the behaviour of thermal energy storages (TES) in practical operation. While the physical processes are well known, it is nevertheless often not possible to adequately evaluate its performance with respect to the quality of thermal stratification inside the tank, which is crucial for the thermodynamic effectiveness of the TES. The behaviour of a TES is experimentally investigated in cyclic charging and discharging operation in interaction with a cogeneration (CHP) unit at a test rig in the lab. From the measurements the quality of thermal stratification is evaluated under varying conditions using different metrics such as normalised stratification factor, modified MIX number, exergy number and exergy efficiency, which extends the state of art for CHP applications. The results show that the positioning of the temperature sensors for turning the CHP unit on and off has a significant influence on both the effective capacity of a TES and the quality of thermal stratification inside the tank. It is also revealed that the positioning of at least one of these sensors outside the storage tank, i.e. in the return line to the CHP unit, prevents deterioration of thermal stratification, thereby enhancing thermodynamic effectiveness. Furthermore, the effects of thermal load and thermal load profile on effective capacity and thermal stratification are discussed, even though these are much smaller compared to the effect of positioning the temperature sensors.
Die bedarfsgerechte Steuerung dezentraler thermischer Energiesysteme, wie Kraft-Wärme-Kopplungs- (KWK-) Anlagen und Wärmepumpen, kann einen entscheidenden Beitrag zur Deckung bzw. Reduktion der Residuallast leisten und so für eine Verringerung der konventionellen Reststromversorgung und den damit einhergehenden Treibhausgasemissionen sorgen. Dafür wurde an der Hochschule Reutlingen in mehrjähriger Forschungsarbeit ein prognosebasierter Steuerungsalgorithmus entwickelt. Gegenstand dieses Beitrags bilden neben der Vorstellung eben jenes Steuerungsalgorithmus auch dessen praktische Umsetzungsvarianten: Eine auf einer speicherprogrammierbaren Steuerung (SPS) rein lokal ausführbare Version sowie eine Webservice-Anwendung für den parallelen Betrieb mehrerer Anlagen – ausgehend von einem zentralen Server. Erprobungen am KWK-Prüfstand der Hochschule Reutlingen bestätigen die zuverlässige Funktionsweise des Algorithmus in den verschiedenen Umsetzungsvarianten. Gleichzeitig wird der Vorteil der bedarfsgerechten Steuerung gegenüber dem, insbesondere im Mikro-KWK-Bereich standardmäßig vorliegenden, wärmegeführten Betrieb in Form einer Steigerung der Eigenstromdeckung von bis zu 27 % aufgezeigt. Neben der bedarfsgerechten Steuerung bedient der entwickelte Algorithmus zudem noch ein weiteres Anwendungsgebiet: Den vorhersagbaren KWK-Betrieb, der beispielsweise in Form täglicher Einspeiseprognose im Rahmen des Redispatch 2.0 eingefordert wird. Die Vorhersage des KWK-Betriebs ist dabei auf zwei Weisen möglich: Als erste Option kann der wärmegeführte Betrieb direkt über den Algorithmus abgebildet und prognostiziert werden. Eine andere Möglichkeit stellt wiederum die bedarfsgerechte Steuerung der Anlage dar; der berechnete optimale Fahrplan entspricht dabei gleichzeitig der Betriebsprognose des KWK-Geräts. Damit ist der entwickelte Steuerungsalgorithmus in der Lage, auf unterschiedliche Weisen zum Gelingen der Energiewende beizutragen.
Die Zielsetzung des hier vorgestellten Projekts ist es, eine intelligente Steuerungsalgorithmik für Biogas-Blockheizkraftwerke (Biogas-BHKW) zu entwickeln und zu optimieren. Daran schließt sich eine Testphase an einer realen Biogasanlage an, an der die Algorithmik zu diesem Zweck in die Anlagensteuerung implementiert wird. Um beurteilen zu können inwieweit die Steuerungsalgorithmik einen Beitrag zur Entlastung von Stromnetzen leisten kann, wird für die Versuche neben dem elektrischen Bedarf des landwirtschaftlichen Betriebs, an dem die Anlage angesiedelt ist, zusätzlich die Residuallast des benachbarten Stromnetzes betrachtet. Diese basiert auf Daten vom nächstgelegenen Umspannwerk, die so skaliert werden, dass sie eine Siedlung repräsentieren, die von dem Biogas-BHKW der Anlage mitversorgt werden kann. Die Einbindung der Steuerungsalgorithmik in die Anlagensteuerung erfolgt über eine Kommunikationsstruktur mit einer Datenbank als zentraler Schnittstelle. Eine erste Versuchsreihe, bei der das Biogas-BHKW nach den Fahrplänen der intelligenten Steuerungsalgorithmik geregelt wird, zeigt vielversprechende Ergebnisse. Über die gesamte Versuchsreihe hinweg berechnet die Steuerungsalgorithmik zuverlässig neue Fahrpläne, die vom BHKW weitestgehend auch sehr gut umgesetzt werden. Zudem kann nachgewiesen werden, dass durch den Einsatz der Algorithmik das vorgelagerte Stromnetz entlastet wird.
The majority of people in sub-Saharan Africa (SSA) rely on so-called “paratransit” for their mobility needs. The term refers to a large informal transport sector that runs independent of government, of which 83% comprises minibus taxis (MBT). MBT technology is often old and contribute significantly to climate change with their high carbon dioxide (CO2) emissions. Issues related to sustainability and climate change are becoming more important world-wide and hardly any attention is given to MBTs. Converting the MBTs from internal combustion engines (ICEs) to electric motors could be a possible solution. The existing power grid in SSA is largely based on fossil power plants and is unstable. This can be seen by frequent local power blackouts. To avoid further strain on the existing power grid, it would therefore make sense to charge the electric minibus taxis (eMBTs) through a grid consisting of renewable energies. A mobility map is created via simulations with collected data points of the MBTs. By using this mobility map, the energy demand of the eMBTs is calculated. Furthermore, a region-specific photovoltaic (PV) and wind simulation can be realised based on existing weather data, and a tool to size the supply system to charge the eMBTs is developed after all data has been collected. With the help of this work, it can be determined to what extent renewable energies such as PV and wind power can be used to support the transition from ICEs to electric engines in the MBT sector.
Flexible KWK – aber wie?
(2021)
Es ist mittlerweile unstrittig, dass Kraft-Wärme-Kopplungs-Anlagen (KWK-Anlagen) zunehmend flexible betrieben werden müssen. Nur so kann es gelingen, die Anlagen optimal in das elektrische Energiesystem einzubinden, beispielsweise zur Deckung der Residuallast oder zur Unterstützung der Verteilnetze, und damit zur Umsetzung der Energiewende beizutragen. Auch der Gesetzgeber fordert den flexiblen Betrieb durch die Absenkung der förderfähigen Betriebsstunden im KWK-Gesetz ein. Um vor diesem Hintergrund jedoch parallel die Deckung des erforderlichen Wärmebedarfs unter Gewährleistung der hohen Effizienz der KWK sicherzustellen, ist eine intelligente Steuerung der Geräte erforderlich. Zu diesem Zweck ist an der Hochschule Reutlingen ein vorausschauender Steuerungsalgorithmus zum „stromoptimierten“ und netzdienlichen“ Betrieb von KWK-Anlagen bei voller Nutzung der KWK-Wärme als Alternative zum standardmäßig anzutreffenden wärmegeführten Betrieb entwickelt worden.
This paper covers test and verification of a forecast-based Monte Carlo algorithm for an optimized, demand-oriented operation of combined heat and power (CHP) units using the hardware-in-the-loop approach. For this purpose, the optimization algorithm was implemented at a test bench at Reutlingen University for controlling a CHP unit in combination with a thermal energy storage, both in real hardware. In detail, the hardware-in-the-loop tests are intended to reveal the effects of demand forecasting accuracy, the impact of thermal energy storage capacity and the influence of load profiles on demand-oriented operation of CHP units. In addition, the paper focuses on the evaluation of the content of energy in the thermal energy storage under practical conditions. It is shown that a 5-layer model allows to determine the energy stored quite accurately, which is verified by experimental results. The hardware-in-the-loop tests disclose that demand forecasting accuracies, especially electricity demand forecasting, as well as load profiles strongly impact the potential for CHP electricity utilization on-site in demand-oriented mode. Moreover, it is shown that a larger effective capacity of the thermal energy storage positively affects demand-oriented operation. In the hardware-in-the-loop tests, the fraction of electricity generated by the CHP unit utilized on-site could thus be increased by a maximum of 27% compared to heat-led operation, which is still the most common modus operandi of small-scale CHP plants. Hence, the hardware-in-the-loop tests were adequate to prove the significant impact of the proposed algorithm for optimization of demand-oriented operation of CHP units.
The integration of renewable energy sources in single family homes is challenging. Advance knowledge of the demand of electrical energy, heat, and domestic hot water (DHW) is useful to schedule projectable devices like heat pumps. In this work, we consider demand time series for heat and DHW from 2018 for a single family home in Germany. We compare different forecasting methods to predict such demands for the next day. While the 1-day-back forecast method led to the prediction of heat demand, the N-day-average performed best for DHW demand when Unbiased Exponentially Moving Average (UEMA) is used with a memory of 2.5 days. This is surprising as these forecasting methods are very simple and do not leverage additional information sources such as weather forecasts.
The objective of the project presented here is to develop an intelligent control algorithm for an energy system consisting of a biogas CHP (combined heat and power), various storage technologies, such as thermal energy storages (TES) and gas storages, and other renewable energy sources, such as photovoltaics. A corresponding algorithm based on the Monte-Carlo method has already been developed at Reutlingen University for CHP units running on natural gas and for heat pumps. The project presented here concentrates on the further development of this algorithm for application to biogas CP units. In this context, an adequate implementation of the gas storage is of primary importance, as it mainly determines the flexibility of the plant. In the course of the validation of the new optimization algorithm, simulations were carried out based on data from the Lower Lindenhof, an agricultural experimental station of the University of Hohenheim. Both an optimization with regard to onsite electricity utilization and an optimization driven by residual load were investigated. Preliminary results show that the optimization algorithm can improve the operation of the biogas CHP unit depending on the selected target function.
Heat pumps are a vital element for reaching the greenhouse gas (GHG) reduction targets in the heating sector, but their system integration requires smart control approaches. In this paper, we first offer a comprehensive literature review and definition of the term control for the described context. Additionally, we present a control approach, which consists of an optimal scheduling module coupled with a detailed energy system simulation module. The aim of this integrated two part control approach is to improve the performance of an energy system equipped with a heat pump, while recognizing the technical boundaries of the energy system in full detail. By applying this control to a typical family household situation, we illustrate that this integrated approach results in a more realistic heat pump operation and thus a more realistic assessment of the control performance, while still achieving lower operational costs.