Název: Intelligent Energy-Savings and Process Improvement Strategies in Energy-Intensive Industries
Překlad názvu: Intelligent Energy-Savings and Process Improvement Strategies in Energy-Intensive Industries
Autoři: Teng, Sin Yong ; Professor, Ponnambalam Sivalinga Govindarajan, (oponent) ; Pavlas, Martin (oponent) ; Máša, Vítězslav (vedoucí práce)
Typ dokumentu: Disertační práce
Rok: 2020
Jazyk: eng
Nakladatel: Vysoké učení technické v Brně. Fakulta strojního inženýrství
Abstrakt: [eng] [cze]

Klíčová slova: Artificial Intelligence; Data-driven Modelling; Energy-Intensive Industries; Industrial Process Improvement; Industrial Systems; Machine Learning; Process Optimization; accumulated experience; analysis from these fields consists of mathematical optimization; and operational heuristics. These approaches serve good as a basis for process improvement. However; As core processing technologies in energy-intensive industries improve leaps and bounds; deep autoencoder) for multiple-unit multiple-objective process optimization. (iii) Proposition of novel bottleneck tree analysis (BOTA) tool for the purpose of process capacity debottlenecking. An extended BOTA was also proposed to incorporate multi-dimensional problems via data-driven approach. (iv) Demonstrated effectiveness of Monte-Carlo simulations; existing facilities gradually fall behind in terms of efficiency and productivity. Ultimately; harsh market competition and environmental legislation will force these traditional facilities to stop operations and decommission. Process improvement and retrofit projects are critical in maintaining the operational performance of these traditional facilities. Current approaches for process improvement are mainly Process Integration; neural network and decision trees for decision-making when integrating new process technology in existing processes. (v) Benchmarked Hierarchical Temporal Memory (HTM) and a dual-mode optimization with multiple predictive tools for real-time operational management. (vi) Implemented artificial neural networks in the conventional process graph (P-graph) framework. (vii) Highlight the future of AI and process engineering in biosystems via a commercial-based multi-omics paradigm.; Process Optimization and Process Intensification. From a high-level context; the purpose of this work is to apply advanced artificial intelligence and machine learning techniques into process improvement projects for energy-intensive industrial systems. The approach taken by this work is a multi-directional approach which tackles this problem from simulation to industrial systems with the following contributions: (i) Application of machine learning technique; their performance can be further improved with up-to-date computational intelligence. Therefore; which includes one-shot learning and neuro-evolution for data-driven single unit modelling and optimization. (ii) Application of dimension reduction (e.g. principle component analysis

Instituce: Vysoké učení technické v Brně (web)
Informace o dostupnosti dokumentu: Plný text je dostupný v Digitální knihovně VUT.
Původní záznam: http://hdl.handle.net/11012/195697

Trvalý odkaz NUŠL: http://www.nusl.cz/ntk/nusl-433427


Záznam je zařazen do těchto sbírek:
Školství > Veřejné vysoké školy > Vysoké učení technické v Brně
Vysokoškolské kvalifikační práce > Disertační práce
 Záznam vytvořen dne 2021-02-24, naposledy upraven 2022-09-04.


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