Applied Intelligence for Industry 4.0

Edition number: 1
Publisher: Chapman and Hall
Date of Publication:
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Product details:

No. of pages:300 pages
Size:254x178 mm
Illustrations: 112 Illustrations, black & white; 112 Line drawings, black & white
Short description:

We are in the era of the fourth Industrial Revolution where AI plays vital roles in human development by enabling extraordinary technological advances and making fundamental changes to the way we live, work and relate to one another.

Long description:

We are all aware that artificial intelligence (AI) has brought a change in our lives, driven by a new form of interaction between man and machine. We are in the era of the fourth industrial revolution where AI plays vital roles in human development by enabling extraordinary technological advances making a fundamental change to the way we live, work and relate to one another. It is an opportunity to help everyone, including leaders, policymakers and people from all income groups and nations, to harness converging technologies in order to create an inclusive, human-centered future. We need to prepare our graduates as well as researchers to conduct their research with 4.0 IR-related technologies. We need to develop policies and implement those policies to focus on the components of 4.0 IR for sustainable developments. Applied Intelligence for Industry 4.0 will cover cutting edge topics in the fields of AI and industry 4.0. The text will appeal to beginners and advanced researchers in computer science, information sciences, engineering and robotics.


  • Discusses advance data mining, feature extraction and classification algorithms for disease detection, cyber security detection and prevention, soil quality assessment and other industrial applications

  • Includes the parameter optimization and explanation of intelligent approaches for business applications

  • Presents context-aware smart insights, and energy efficient and smart computing for the next-generation smart industry
Table of Contents:

  1. Multi
    -labelled Bengali Public Comments Sentiment Analysis with Bidirectional Recurrent Neural Networks (Bi
    -RNN). 2. Machine Learning and Blockchain based Privacy
    -aware: Cognitive Radio Internet of Things. 3. Machine Learning Based Models for Predicting Autism Spec
    -trum Disorders. 4. Implementing Machine Learning Through the Neural Network for the Time Delay SIR Epidemic Model for the Future Forecast. 5. Prediction of PCOS Using Machine Learning and Deep Learning Algorithms. 6. Malware Detection: Performance Evaluation of ML Algo
    -rithms based on Feature Selection and ANOVA. 7. An Efficient Approach to Assess the Soil Quality of Sundar
    -bans Utilizing Hierarchical Clustering. 8. A Machine Learning Approach to Clinically Diagnose Human Pyrexia Cases. 9. Prediction of the Dengue Incidence in Bangladesh using Ma
    -chine Learning. 10. Detecting DNS over HTTPS Traffic Using Ensemble Feature Based Machine Learning. 11. Development of Risk
    -Free COVID
    -19 Screening Algorithm from Routine Blood Test using Ensemble Machine Learning. 12. A Transfer Learning Approach to Recognize Pedestrian At
    -tributes. 13.TF
    -IDF Feature
    -based Spam Filtering of Mobile SMS using Machine Learning Approach. 14. Content
    -based Spam Email Detection Using N
    -gram Machine Learning Approach. 15. AI Poet: A Deep Learning Based Approach to Generate Arti
    -ficial Poetry in Bangla. 16. Document Level Comparative Sentiment Analysis on Bangla News using Long
    -Short Term Memory and Machine Learning Approaches. 17. Employee Turnover Prediction Using Machine Learning Ap
    -proach. 18. A Dynamic Topic Identification and Labeling Approach of COVID
    -19 Tweets. 19. Analyzing IT Job Market and Classifying IT Jobs Using Ma
    -chine Learning Algorithms