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A01=Abdulmohsen Almalawi
A01=Adil Fahad
A01=Xun Yi
A01=Zahir Tari
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Age Group_Uncategorized
Author_Abdulmohsen Almalawi
Author_Adil Fahad
Author_Xun Yi
Author_Zahir Tari
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Category1=Non-Fiction
Category=TJ
Category=UT
COP=United States
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Language_English
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Price_€100 and above
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SCADA Security: Machine Learning Concepts for Intrusion Detection and Prevention

Examines the design and use of Intrusion Detection Systems (IDS) to secure Supervisory Control and Data Acquisition (SCADA) systems

Cyber-attacks on SCADA systems—the control system architecture that uses computers, networked data communications, and graphical user interfaces for high-level process supervisory management—can lead to costly financial consequences or even result in loss of life. Minimizing potential risks and responding to malicious actions requires innovative approaches for monitoring SCADA systems and protecting them from targeted attacks. SCADA Security: Machine Learning Concepts for Intrusion Detection and Prevention is designed to help security and networking professionals develop and deploy accurate and effective Intrusion Detection Systems (IDS) for SCADA systems that leverage autonomous machine learning.

Providing expert insights, practical advice, and up-to-date coverage of developments in SCADA security, this authoritative guide presents a new approach for efficient unsupervised IDS driven by SCADA-specific data. Organized into eight in-depth chapters, the text first discusses how traditional IT attacks can also be possible against SCADA, and describes essential SCADA concepts, systems, architectures, and main components. Following chapters introduce various SCADA security frameworks and approaches, including evaluating security with virtualization-based SCADAVT, using SDAD to extract proximity-based detection, finding a global and efficient anomaly threshold with GATUD, and more. This important book:

  • Provides diverse perspectives on establishing an efficient IDS approach that can be implemented in SCADA systems
  • Describes the relationship between main components and three generations of SCADA systems
  • Explains the classification of a SCADA IDS based on its architecture and implementation
  • Surveys the current literature in the field and suggests possible directions for future research

SCADA Security: Machine Learning Concepts for Intrusion Detection and Prevention is a must-read for all SCADA security and networking researchers, engineers, system architects, developers, managers, lecturers, and other SCADA security industry practitioners.

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Original price €113.99
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A01=Abdulmohsen AlmalawiA01=Adil FahadA01=Xun YiA01=Zahir TariAge Group_UncategorizedAuthor_Abdulmohsen AlmalawiAuthor_Adil FahadAuthor_Xun YiAuthor_Zahir Tariautomatic-updateCategory1=Non-FictionCategory=TJCategory=UTCOP=United StatesDelivery_Delivery within 10-20 working daysLanguage_EnglishPA=AvailablePrice_€100 and abovePS=Activesoftlaunch
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Product Details
  • Weight: 476g
  • Dimensions: 158 x 231mm
  • Publication Date: 25 Feb 2021
  • Publisher: John Wiley & Sons Inc
  • Publication City/Country: United States
  • Language: English
  • ISBN13: 9781119606031

About Abdulmohsen AlmalawiAdil FahadXun YiZahir Tari

ABDULMOHSEN ALMALAWI PHD is Assistant Professor Department of Computer Science University of King Abdulaziz Saudi Arabia. His research is focused on machine learning. He is co-author of Network Classification for Traffic Management. ZAHIR TARI PHD is Professor at RMIT University Australia. He is on the editorial board of several journals including ACM Computing Surveys IEEE Transactions on Computers IEEE Transactions on Parallel and Distributed Systems and IEEE Cloud Computing. ADIL FAHAD PHD is Assistant Professor Department of Computer Science University of Albaha Saudi Arabia. His research interests are in the areas of wireless sensor networks mobile networks SCADA security and ad-hoc networks with emphasis on data mining statistical analysis/modelling and machine learning. XUN YI PHD is Professor School of Computer Science and Information Technology RMIT University Australia. He has published more than 150 research papers in international journals and has led several Australia Research Council (ARC) Discovery projects. He is Associate Editor of IEEE Transactions on Dependable and Secure Computing.

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