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Data-Driven Golden Jackal Optimization–Long Short-Term Memory Short-Term Energy-Consumption Prediction and Optimization System
by
Tang, Hui
, Xu, Peng
, Yang, Yongjie
, Li, Yulong
, Cai, Yan
in
Algorithms
/ Analysis
/ Architecture and energy conservation
/ China
/ Design
/ Energy conservation
/ Energy consumption
/ energy consumption monitoring
/ energy consumption optimization
/ Energy efficiency
/ Energy industry
/ Energy management systems
/ energy saving and consumption reduction
/ Energy use
/ Genetic algorithms
/ modeling and simulation
/ Office buildings
/ short-term energy-consumption forecast
2024
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Data-Driven Golden Jackal Optimization–Long Short-Term Memory Short-Term Energy-Consumption Prediction and Optimization System
by
Tang, Hui
, Xu, Peng
, Yang, Yongjie
, Li, Yulong
, Cai, Yan
in
Algorithms
/ Analysis
/ Architecture and energy conservation
/ China
/ Design
/ Energy conservation
/ Energy consumption
/ energy consumption monitoring
/ energy consumption optimization
/ Energy efficiency
/ Energy industry
/ Energy management systems
/ energy saving and consumption reduction
/ Energy use
/ Genetic algorithms
/ modeling and simulation
/ Office buildings
/ short-term energy-consumption forecast
2024
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Data-Driven Golden Jackal Optimization–Long Short-Term Memory Short-Term Energy-Consumption Prediction and Optimization System
by
Tang, Hui
, Xu, Peng
, Yang, Yongjie
, Li, Yulong
, Cai, Yan
in
Algorithms
/ Analysis
/ Architecture and energy conservation
/ China
/ Design
/ Energy conservation
/ Energy consumption
/ energy consumption monitoring
/ energy consumption optimization
/ Energy efficiency
/ Energy industry
/ Energy management systems
/ energy saving and consumption reduction
/ Energy use
/ Genetic algorithms
/ modeling and simulation
/ Office buildings
/ short-term energy-consumption forecast
2024
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Data-Driven Golden Jackal Optimization–Long Short-Term Memory Short-Term Energy-Consumption Prediction and Optimization System
Journal Article
Data-Driven Golden Jackal Optimization–Long Short-Term Memory Short-Term Energy-Consumption Prediction and Optimization System
2024
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Overview
In order to address the issues of significant energy and resource waste, low-energy management efficiency, and high building-maintenance costs in hot-summer and cold-winter regions of China, a research project was conducted on an office building located in Nantong. In this study, a data-driven golden jackal optimization (GJO)-based Long Short-Term Memory (LSTM) short-term energy-consumption prediction and optimization system is proposed. The system creates an equivalent model of the office building and employs the genetic algorithm tool Wallacei to automatically optimize and control the building’s air conditioning system, thereby achieving the objective of reducing energy consumption. To validate the authenticity of the optimization scheme, unoptimized building energy consumption was predicted using a data-driven short-term energy consumption-prediction model. The actual comparison data confirmed that the reduction in energy consumption resulted from implementing the air conditioning-optimization scheme rather than external factors. The optimized building can achieve an hourly energy saving rate of 6% to 9%, with an average daily energy-saving rate reaching 8%. The entire system, therefore, enables decision-makers to swiftly assess and validate the efficacy of energy consumption-optimization programs, thereby furnishing a scientific foundation for energy management and optimization in real-world buildings.
Publisher
MDPI AG
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