Improving Energy Efficiency through Data-Driven Modeling, Simulation and Optimization

In October 2014, the EU leaders agreed upon three key targets for the year 2030: a reduction by at least 40% in greenhouse gas emissions, savings of at least 27% for renewable energy, and improvements by at least 27% in energy efficiency. The increase in computational power combined with advanced mo...

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Other Authors: Deschrijver, Dirk (Editor)
Format: Electronic Book Chapter
Language:English
Published: Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2021
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DOAB: description of the publication
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520 |a In October 2014, the EU leaders agreed upon three key targets for the year 2030: a reduction by at least 40% in greenhouse gas emissions, savings of at least 27% for renewable energy, and improvements by at least 27% in energy efficiency. The increase in computational power combined with advanced modeling and simulation tools makes it possible to derive new technological solutions that can enhance the energy efficiency of systems and that can reduce the ecological footprint. This book compiles 10 novel research works from a Special Issue that was focused on data-driven approaches, machine learning, or artificial intelligence for the modeling, simulation, and optimization of energy systems. 
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653 |a heat transfer coefficient 
653 |a energy consumption 
653 |a turbo-propeller 
653 |a regional 
653 |a fuel 
653 |a weight 
653 |a range 
653 |a design 
653 |a CO2 reduction 
653 |a multi-objective combinatorial optimization 
653 |a meta-heuristics 
653 |a ant colony optimization 
653 |a non-intrusive load monitoring 
653 |a appliance classification 
653 |a appliance feature 
653 |a recurrence graph 
653 |a weighted recurrence graph 
653 |a V-I trajectory 
653 |a convolutional neural network 
653 |a energy baselines 
653 |a machine learning 
653 |a clustering 
653 |a neural methods 
653 |a smart intelligent systems 
653 |a building energy consumption 
653 |a building load forecasting 
653 |a energy efficiency 
653 |a thermal improved of buildings 
653 |a anti-icing 
653 |a heat and mass transfer 
653 |a heating power distribution 
653 |a heat load reduction 
653 |a optimization method 
653 |a experimental validation 
653 |a big data process 
653 |a predictive maintenance 
653 |a fracturing roofs to maintain entry (FRME) 
653 |a field measurement 
653 |a numerical simulation 
653 |a side abutment pressure 
653 |a strata movement 
653 |a energy 
653 |a manufacturing 
653 |a prediction 
653 |a forecasting 
653 |a modelling 
653 |a n/a 
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