Hybrid Intelligent Modeling Technology and Optimization Strategy for Industrial Energy Consumption Processes
Materialtyp:
ArtikelUtgivningsinformation: MDPI - Multidisciplinary Digital Publishing Institute 2025Beskrivning: 1 electronic resource (204 p.)Innehållstyp: - text
- computer
- online resource
- 9783725838837
- 9783725838844
- Technology, Engineering, Agriculture, Industrial processes
- Technology: general issues
- History of engineering and technology
- AutoGluon
- DC microgrid
- P2G-CCS
- accuracy
- artificial intelligence
- carbon trading
- cloud-edge-terminal
- complexity
- coordination control
- data preprocessing
- data-driven monitoring
- degradation prediction
- distributed model predictive control
- durability test
- dynamic event-triggered mechanism
- economically optimized dispatch
- energy conservation and consumption reduction
- energy management
- energy saving
- energy-saving analysis
- excavator boom-and-dipper operation durations
- gated recurrent unit
- grey wolf optimizer
- hybrid energy storage
- hybrid intelligent modeling
- improved genetic algorithm
- independent component analysis
- industrial processes
- integrated energy systems
- landscape uncertainty
- load frequency control
- machine learning
- meta-learning
- model predictive control
- mutual information
- open-pit mine
- operation risk prediction
- optimization strategy
- principal component analysis
- production forecast
- proton-exchange membrane fuel cells
- random forests
- rapid load change
- recovery rate
- reinforcement learning
- state of charge
- supercritical
Open Access Unrestricted online access star
This is to explore the multifaceted aspects of hybrid intelligent modeling technology and optimization strategy for industrial energy consumption processes. With the increasing emphasis on sustainable practices, efficient management of industrial energy consumption has become a critical concern. It explores innovative approaches that leverage data-driven intelligence to model and optimize energy use in industrial processes. The integration of advanced technologies such as machine learning, artificial intelligence and data analytics will play a pivotal role in achieving energy efficiency, reducing environmental impacts and ensuring the sustainability of industrial operations. Research areas include hybrid intelligent modeling techniques, intelligent optimization strategies, case studies and applications, and interdisciplinary approaches. These studies collectively contribute to the body of knowledge on hybrid intelligent modeling technology and optimization strategy, offering practical solutions and theoretical frameworks to address energy conservation and consumption reduction. By sharing their practice and insights in the development and application of these new technologies, the authors of the articles in this reprint have demonstrated the value of hybrid intelligent modeling technology and optimization strategy for industrial energy consumption processes, providing readers with valuable ideological inspiration in the field.
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eng
Freely available e-book