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The goal of this thesis is to thoroughly investigate the concepts of stand-alone and decarbonization of optical fiber networks. Because of their dependability, fast speed, and capacity, optical fiber networks are vital inmodern telecommunications. Their considerable energy consumption and carbon emissions, on the other hand, constitute a danger to global sustainability objectives and must be addressed.
The first section of the thesis presents a summary of the current state of optical fiber networks, their
components, and the energy consumption connected with them. This part also goes over the difficulties of lowering energy usage and carbon emissions while preserving network performance and dependability.
The second section of the thesis focuses on the stand-alone idea, which entails powering the optical fiber network with renewable energy sources and energy-efficient technology. This section investigates and explores the possibilities of renewable energy sources like solar and wind power to power the network. It also investigates energy-efficient technologies like virtualization and cloud computing, as well as their potential to minimize network energy usage.
The third section of the thesis focuses on the notion of decarbonization, which entails lowering carbon emissions linked with the optical fiber network. This section looks at various carbon-reduction measures, such as employing low-carbon energy sources and improving energy efficiency. It also covers the relevance of carbon offsets and the difficulties associated with adopting decarbonization measures in the context of optical fiber networks.
The fourth section of the thesis compares the ideas of stand-alone and decarbonization. It investigates the advantages and disadvantages of each strategy, as well as their potential to minimize energy consumption and carbon emissions in optical fiber networks. It also explores the difficulties in applying these notions as well as potential hurdles to their wider adoption.
Finally, the need of addressing the energy consumption and carbon emissions connected with optical fiber networks is emphasized in this thesis.
It outlines important obstacles and potential impediments to adopting these initiatives and gives insights into potential ways for decreasing them.
It also makes suggestions for further study in this area.
The current thesis conducts the study on the integration of digitalization techniques aimed at improving energy supply efficiency in off-grid energy systems. The primary objective is to fortify the security of energy supply in remote areas, particularly in instances of adverse weather conditions, unanticipated changes in load and fluctuations in the performance of renewable energy systems. This objective is to be achieved through the implementation of a smart load management strategy in stand-alone photovoltaic systems (SAPVS). This strategy involves deployment of forecasting algorithms on an edge device that operates with limited processing resources in an environment characterized for the lack of internet connection. The edge device is designed to interact with a smart home gateway that prioritizes, and schedules smart appliances based on the forecasted state of charge (SOC) in the 36-hours ahead of the SAPVS operation (the implementation of the loads schedule deployed on the Home Assistant device is out of the scope of the tasks implemented for this project).
The edge device, developed using a Raspberry Pi 3B+, was specifically intended for being implemented along with a SAPVS, in remote areas such as health stations in Africa and tropical islands, providing communities with a reliable source of electrical energy. The deployment of the strategy was carried out in four phases. The first phase involved the implementation of an Extraction-Transformation-Load (ETL) pipeline, where data was gathered from various heterogeneous hardware sources of an implemented test system that served as the enabler and testbench of this research, this test stand is composed of power electronics components such as an inverter, a MPPT solar charge controller, a smart meter, and a BOS LiFePo4 battery prototype. In the transformation stage, a data model was developed to identify the most critical parameters of the energy system, and to eliminate outliers and null values. In the load stage, a local SQL database was established for saving and structuring the data gathered and to ensure high-quality data with defined units and casting.
The second phase involved data analysis to identify the relevant features and potential exogenous variables for the forecasting model to implement. In the third phase, an Auto Regressive Moving Average (ARMA) model with two selected exogenous variables was implemented to forecast the AC load consumption profile for the 36- hours ahead of the off-grid system operation. The final phase involved the information exchange with the Home Assistant device, by transferring to it from the edge device the battery SOC present value and the predicted 36-hour ahead AC load profile information for prioritization and scheduling of loads; this through an MQTT interface.
The outcome of the experiment was a successful deployment of a data engineering and data forecasting approach that enabled data quality strategy implementation, local database storage, and forecasting algorithms on a processing and internet-constrained edge device. The interface with a home assistant implementation resulted in the successful execution of smart load management endeavors in an off-grid system, thereby enhancing the energy security of supply and contributing to the advancement of data-driven strategies in the rural electrification sector.
This thesis emphasizes the significance of digitalization strategies in smart SAPVS and highlights the potential of edge computing solutions in achieving seamless energy management in smart homes.
Ziel des Pilotprojektes EnMa-HAW ist die Erarbeitung und Erprobung technisch und organisatorisch übertragbarer Konzepte für ein automationsgestütztes Energiemanagement an allen Hochschulen für angewandte Wissenschaften im Land Baden-Württemberg. Das Energiemanagement wird technisch mittels Messtechnik, Datenerfassung, Datenspeicherung und Visualisierung umgesetzt und organisatorisch mit einem Energiezirkel in den Hochschulen verankert.
Energiemanagement im Betrieb
(2021)
Energie aus erneuerbaren Ressourcen ist nicht immer beliebig verfügbar. Je nach Jahreszeit und Witterung variiert beispielsweise die durch Solarparks oder Windkraftanlagen zur Verfügung gestellte Leistung. Durch den kontinuierlichen Ausbau der erneuerbaren Energien wird sich die Volatilität im Energiesystem in Zukunft immer stärker ausprägen. Die Industrie auf die sich ändernden Versorgungsstrukturen vorzubereiten und anzupassen ist eine große Herausforderung der nächsten Jahrzehnte. Unternehmen müssen zukünftig ihre Prozesse und Betriebsorganisation so gestalten können, dass sich der Energieverbrauch zumindest in Teilen flexibel an das volatile Energieangebot anpassen kann. Neben der Entwicklung von Technologien, Konzepten und Maßnahmen zur energetischen Flexibilisierung von industriellen Prozessen liegt ein zweiter Schwerpunkt zukünftiger Arbeiten auf der Entwicklung einer durchgängigen IT-Infrastruktur, mit der Unternehmen und Energieanbieter in Zukunft Informationen von der Produktionsmaschine bis zu den Energiemärkten bereitstellen und austauschen können. Dies führt zu einem Paradigmenwechsel im Betrieb industrieller Prozesse - weg vom kontinuierlichen und rein nachfragegetriebenen Energieverbrauch hin zum anpassbaren, energieflexiblen Betrieb industrieller Anlagen. Dieses Nachschlagewerk stellt die wichtigsten Ergebnisse der Forschung im Rahmen des Kopernikus-Projekts Synergie vor und verdeutlicht richtungsweisende Erkenntnisse für weitere Entwicklungen in dem noch jungen Feld der industriellen Energieflexibilität.
This paper presents the use of model predictive control (MPC) based approach for peak shaving application of a battery in a Photovoltaic (PV) battery system connected to a rural low voltage gird. The goals of the MPC are to shave the peaks in the PV feed-in and the grid power consumption and at the same time maximize the use of the battery. The benefit to the prosumer is from the maximum use of the self-produced electricity. The benefit to the grid is from the reduced peaks in the PV feed-in and the grid power consumption. This would allow an increase in the PV hosting and the load hosting capacity of the grid.
The paper presents the mathematical formulation of the optimal control problem
along with the cost benefit analysis. The MPC implementation scheme in the
laboratory and experiment results have also been presented. The results show
that the MPC is able to track the deviation in the weather forecast and operate
the battery by solving the optimal control problem to handle this deviation.
Dissertation D. Dongol
Der Entwurf und die Realisierung gedruckter Schaltungen oder Elektronikkomponenten stellt ein intensives Thema der Forschung dar. Forschungsgruppen beschäftigen sich zunehmend mit der Entwicklung von gedruckten Energy Harvestern, weil diese kostengünstig und einfach herstellbar sind. Das Energy Harvesting (EH) oder auch das ”Mikro Energy Harvesting“ (MEH) bezeichnet die Gewinnung von elektrischer Energie aus der Umgebung, um elektronische Verbraucher zu versorgen, kontinuierliche Leistungen zu erzeugen, das System energieeffizienter zu machen, sowie die Energiespeicherung im Mikrowattbereich zu gewährleisten. Energy Harvesting-Systeme stellen eine Alternative gegenüber der Energieversorgung autarker Low-Power-Elektronik mit Batterien dar. Das Energiemanagement solcher EH-Systeme ist jedoch eine Herausforderung aufgrund der Energieverfügbarkeit und der im Zeitablauf nicht konstanten Verlustleistung. Dieser Beitrag gibt einen Überblick über die derzeit existierenden ultra low-power Energiemanagement Schaltungen für Energy Harvester. Dabei wird insbesondere der Fokus auf gedruckte Energy Harvester gelegt. Es soll aufgezeigt werden, welche Aspekte der vorgestellten Energieversorgungsschaltungen bei der Entwicklung eines Energieversorgungschips für gedruckte Energy Harvester berüucksichtigt werden sollen.