Cart
Free Shipping in the UK
Proud to be B-Corp

Machine Learning Algorithms and Applications in Engineering Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)

Machine Learning Algorithms and Applications in Engineering By Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)

Machine Learning Algorithms and Applications in Engineering by Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)


£133.39
Condition - New
Only 2 left

Summary

Discusses various applications of ML in engineering fields and the use of ML algorithms in solving challenging engineering problems ranging from biomedical to manufacturing and industrial. Through numerous case studies, it will assist researchers and practitioners in selecting the correct options and strategies for managing organizational tasks.

Machine Learning Algorithms and Applications in Engineering Summary

Machine Learning Algorithms and Applications in Engineering by Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)

1 Includes the latest research contributions on ML perspectives and applications.
2 Follows an algorithmic approach for data analysis in ML and includes real time engineering case studies.
3 Addresses the emerging issues in computing such as Deep Learning, Internet of Things and Data Analytics.
4 Focuses on ML techniques that are unsupervised and semi-supervised for unseen and seen data sets on commercial value-added research applications.
5 Discusses how the advancements on data science and computing domain open possibilities for cross disciplinary connections.

About Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)

Prasenjit Chatterjee is an Associate Professor of Mechanical Engineering Department at MCKV Institute of Engineering, India. He has published over 80 research papers in various international journals and has received numerous awards including Outstanding Researcher Award and University Gold Medal. He has been the Guest Editor of several special issues and has edited and authored several books on decision-making approaches and sustainability. He is the Lead Series Editor of International Perspectives on Decision Analysis and Operations Research, Emerald Group Publishing. Dr. Chatterjee is one of the developers of a new data-driven multiple-criteria decision-making method called Measurement of Alternatives and Ranking according to COmpromise Solution (MARCOS).
Morteza Yazdani works at Universidad Loyola Andalucia, Spain. Previously he finished his post-doctoral research at the University of Toulouse and was a lecturer the European University of Madrid. He participates in the editorial board of the International Journal of Decision Support System Technology and is a reviewer in different journals. His main research areas are decision-making modelling and fuzzy decision system in application of supply chain and energy systems and has published several journal articles.
Francisco de Asis Fernandez Navarro has earned his PhD in Computer Science and Artificial Intelligence from the University of Malaga, Spain. He also obtained a degree in Market Research from the Open University of Catalonia (UOC). He was awarded at the European Space Agency Noordwijk, The Netherlands with a postdoctoral fellowship in computational management and currently works as an Associate Professor at the Loyola University of Andalusia, Department of Quantitative Methods.
Javier Perez-Rodriguez earned his PhD in ICT from the University of Granada, Spain. In 2018 he joined the Department of Quantitative Methods at the University of Loyola, Andalucia as an Associate Professor. His research is focused on Computer Science and Artificial Intelligence and Bioinformatics. Within the area of machine learning, specifically, his works have been about pattern recognition and classification and has published several papers in reputable journals. His residency at the Institut fur Mathematik und Informatik of the University of Greifswald, Germany was with Professor Stanke, who develops and maintains one of the most prestigious automatic gene recognition systems at present at an international level.

Table of Contents

Introduction. Fundamentals of Machine Learning. Machine Learning Algorithms: Theoretical and Mathematical Aspects. An Exhaustive Review of Applications of Machine Learning Applications in Engineering. Applications in Engineering. Design of Highway and Transportation Engineering for the Prediction of Transport Arrivals & Pedestrian Movement Analysis / Traffic Pattern / Congestion Management. Use of Machine Learning in Construction, Surveying, Geo Technical and Geo-Spatial Engineering / Seismic Data Analysis. Machine Learning for Industrial Automation / Smart Grid Management / Driver Monitoring Systems / Autonomous Vehicles. Machine Learning in Grid Integration and Power Distribution / Control and Feedback System / Power Quality / Power Usage Analysis. Machine Learning in Robotics and Intelligent Machines. Machine Learning for Predictive Maintenance and Condition Monitoring / Reliability Engineering. Use of IoT and Big Data Analytics in Manufacturing / Demand Forecasting / Process Optimization / Inventory Planning / Fault Diagnosis for Shop Floor Machinery. Machine Learning for Carbon Emission / Environmental Engineering. Machine Learning for Renewable Energy Policy. Machine Learning in Biomedical Engineering.

Additional information

NPB9780367569129
9780367569129
0367569124
Machine Learning Algorithms and Applications in Engineering by Prasenjit Chatterjee (MCKV Institute of Engineering, Liluah)
New
Hardback
Taylor & Francis Ltd
2023-02-28
314
N/A
Book picture is for illustrative purposes only, actual binding, cover or edition may vary.
This is a new book - be the first to read this copy. With untouched pages and a perfect binding, your brand new copy is ready to be opened for the first time

Customer Reviews - Machine Learning Algorithms and Applications in Engineering