2023
DOI: 10.3390/en16134893
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Machine Learning-Based Estimation of COP and Multi-Objective Optimization of Operation Strategy for Heat Source Considering Electricity Cost and On-Site Consumption of Renewable Energy

Abstract: Air conditioning is a significant consumer of electricity in buildings, accounting for around 40% of the total consumption. While previous studies have focused on planning methods to minimize electricity costs, recent years have seen an increasing need for energy management methods that consider environmental performance, such as CO2 emissions, alongside economic efficiency. This study proposes a mechanism to support stakeholders’ decision-making by calculating Pareto solutions based on the multi-objective opt… Show more

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Cited by 3 publications
(1 citation statement)
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References 22 publications
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“…Based on these characteristics, an improved gradient-based genetic algorithm (IGGA) was proposed to optimize the compensation parameters, which combines the IM and canonical GA. It improves the search efficiency and convergence speed of the algorithm by analyzing and utilizing the gradient information to guide the evolutionary direction of the GA [25]. At the same time, after adding the gradient correction disturbance, the global convergence is improved [26].…”
Section: Optimization Algorithmmentioning
confidence: 99%
“…Based on these characteristics, an improved gradient-based genetic algorithm (IGGA) was proposed to optimize the compensation parameters, which combines the IM and canonical GA. It improves the search efficiency and convergence speed of the algorithm by analyzing and utilizing the gradient information to guide the evolutionary direction of the GA [25]. At the same time, after adding the gradient correction disturbance, the global convergence is improved [26].…”
Section: Optimization Algorithmmentioning
confidence: 99%