Intelligent Data-Analytics for Condition Monitoring: Smart Grid Applications
Malik, Hasmat
Fatema, Nuzhat
Iqbal, Atif
Intelligent Data-Analytics for Condition Monitoring: Smart Grid Applications looks at intelligent and meaningful uses of data required for an optimized and efficient engineering processes and provides application perspectives of various deep learning models for the condition monitoring of electrical equipment. With chapters discussing the fundamentals of machine learning and data analytics, the book is in two parts; i) the application of intelligent data analytics in Solar PV fault diagnostics, transformer health monitoring and faults diagnostics, and induction motor faults and ii) forecasting issues using data analytics which looks at global solar radiation forecasting, wind data forecasting and load forecasting demand side management. This reference is useful for all engineers and researchers needing a preliminary knowledge on data analytics fundamentals and the working methodologies and architecture of smart grid systems. Features deep learning methodologies in smart grid deployment and maintenance applicationsIncludes coding for the intelligent data analytics for each applicationFeatures advanced problems and solutions of smart grid using advance data analytic techniques INDICE: 1. Advances in Machine Learning and Data Analytics PART A: Intelligent Data Analytics for Classification in Smart Grid 2. Intelligent Data Analytics for PV Fault diagnosis Using Deep Convolutional Neural Network (ConvNet/CNN) 3. Intelligent Data Analytics for Power Transformer Health Monitoring Using Modified Fuzzy Q Learning (MFQL) 4. Intelligent Data Analytics for Induction Motor Using Gene Expression Programming (GEP) 5. Intelligent Data Analytics for Power Quality Disturbance Analysis Using Multi-Class ELM 6. Intelligent Data Analytics for Transmission Line Fault Diagnosis Using EEMD Based Multiclass SVM and PSVM PART B: Intelligent Data Analytics for Forecasting in Smart Grid 7. Intelligent Data Analytics for Global Solar Radiation Forecasting for Solar Power Production Using Deep Learning Neural Network (DLNN) 8. Intelligent Data Analytics for Wind Speed Forecasting for Wind Power Production Using Long Short-Term memory (LSTM) Network 9. Intelligent Data Analytics for Time-Series Load Forecasting Using Fuzzy Reinforcement Learning (FRL) 10. Intelligent Data Analytics for Battery Charging/Discharging Forecasting Using Semi-supervised and Unsupervised Extreme Learning Machines
- ISBN: 978-0-323-85510-5
- Editorial: Academic Press
- Encuadernacion: Rústica
- Páginas: 260
- Fecha Publicación: 01/05/2021
- Nº Volúmenes: 1
- Idioma: Inglés