Cite This        Tampung        Export Record
Judul Data-Driven Intelligent Modeling and Optimization Algorithms for Industrial Processes / Huang, Zixin
Pengarang Huang, Zixin
Du, Sheng
Jin, Li
Wan, Xiongbo
Penerbitan Basel, Switzerland, 2025
Deskripsi Fisik 286 :ilus ;25 cm.
ISBN 978-3-7258-4912-3
Subjek ARTIFICIAL INTELLIGENCE
Catatan The aim of this Special Issue is to explore the multifaceted aspects of data-driven intelligent modeling and optimization algorithms for industrial processes. The main goals are to harness the power of data to improve control, decision making, and parameter optimization, and to drive industrial systems to unprecedented levels of efficiency, reliability, and adaptability. Research areas in this Special Issue include digital twin technology, multimodal data recognition, sensor data ingestion and real-time processing, multi-objective path-planning, conditional generative adversarial network, generating job recommendations, comprehensive risk assessment, large language models, self-supervised key-point learning, trustworthy article ranking, engine optimization model, and bioinspired generative design. These powerful and intelligent algorithms use data for control, decision making, and parameter optimization, driving industrial systems to unprecedented levels of efficiency, reliability, and adaptability. By sharin
Bentuk Karya Tidak ada kode yang sesuai
Target Pembaca Tidak ada kode yang sesuai
Lokasi Akses Online https://mdpi-res.com/bookfiles/book/11376/DataDriven_Intelligent_Modeling_and_Optimization_Algorithms_for_Industrial_Processes.pdf?v=1771467094

 
No Barcode No. Panggil Akses Lokasi Ketersediaan
066926192 006.3 Hua d Baca Online Perpustakaan Pusat - Online Resources
Ebook
Tersedia
Tag Ind1 Ind2 Isi
001 INLIS000000000166964
005 20260219112055
007 ta
008 260219################|##########|#|##
020 # # $a 978-3-7258-4912-3
035 # # $a 0010-0226000904
082 # # $a 006.3
084 # # $a 006.3 Hua d
100 1 # $a Huang, Zixin
245 1 # $a Data-Driven Intelligent Modeling and Optimization Algorithms for Industrial Processes /$c Huang, Zixin
260 # # $a Basel, Switzerland,$c 2025
300 # # $a 286 : $b ilus ; $c 25 cm.
505 # # $a The aim of this Special Issue is to explore the multifaceted aspects of data-driven intelligent modeling and optimization algorithms for industrial processes. The main goals are to harness the power of data to improve control, decision making, and parameter optimization, and to drive industrial systems to unprecedented levels of efficiency, reliability, and adaptability. Research areas in this Special Issue include digital twin technology, multimodal data recognition, sensor data ingestion and real-time processing, multi-objective path-planning, conditional generative adversarial network, generating job recommendations, comprehensive risk assessment, large language models, self-supervised key-point learning, trustworthy article ranking, engine optimization model, and bioinspired generative design. These powerful and intelligent algorithms use data for control, decision making, and parameter optimization, driving industrial systems to unprecedented levels of efficiency, reliability, and adaptability. 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 data-driven intelligent modeling and optimization algorithms for industrial processes, providing readers with valuable ideological inspiration in the field.
650 # # $a ARTIFICIAL INTELLIGENCE
700 1 # $a Du, Sheng
700 1 # $a Jin, Li
700 0 # $a Wan, Xiongbo
856 # # $a https://mdpi-res.com/bookfiles/book/11376/DataDriven_Intelligent_Modeling_and_Optimization_Algorithms_for_Industrial_Processes.pdf?v=1771467094
990 # # $a 066926192
Content Unduh katalog