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OverviewThis handbook is an authoritative reference on the Dynamic Data Driven Applications Systems paradigm, pioneered by Dr. Darema, and contains DDDAS-based work conducted by contributing co-authors in numerous areas, to benefit science and technology researchers and practitioners developing DDDAS-based technologies. Beginning with general concepts and history of the DDDAS paradigm in the introductory chapter, this Third Volume in the series contains 33 chapters contributed by leading experts and is organized in nine thematic areas, spanning natural, engineered, or societal systems to enable an accurate understanding, analysis, and control of corresponding complex systems. The thematic areas cover fundamental and foundational methods; materials, structural, and energy systems; healthcare and situation awareness systems; air and space, communications, and cyber systems. The work presented shows how DDDAS unifies the computational and instrumentation aspects of an application system, extends computing notions to span from the high-end to the edge computing and real-time data acquisition and control, adaptively manages the operation of complex, distributed, multimodal systems through high-dimensional, systems-cognizant model-coordination and multi-objective optimization of resources and service delivery; supports methodologies for achieving autonomic and enhanced AI capabilities; DDDAS is foundational concept for Predictive Digital Twins and Dynamic Digital Twins. The authorsexplain how DDDAS unifies the computational and instrumentation aspects of an application system, extends the notion of Smart Computing to span from the high-end to the real-time data acquisition and control, and manages Big Data exploitation with high-dimensional model coordination. Full Product DetailsAuthor: Erik Blasch , Frederica Darema , Alex AvedPublisher: Springer International Publishing AG Imprint: Springer International Publishing AG ISBN: 9783031885730ISBN 10: 3031885732 Pages: 881 Publication Date: 07 August 2025 Audience: Professional and scholarly , Professional & Vocational Format: Hardback Publisher's Status: Forthcoming Availability: Not yet available ![]() This item is yet to be released. You can pre-order this item and we will dispatch it to you upon its release. Table of ContentsChapter 1 The Dynamic Data Driven Applications Systems (DDDAS) Paradigm Informs Artificial Intelligence towards Digital Science and Engineering.- Chapter 2 Towards Formal Correctness Envelopes for Dynamic Data-Driven Aerospace Systems.- Chapter 3 Dynamic Data Assimilation for Atmospheric Composition: Advances and Perspectives.- Chapter 4 A Model Data Fusion for Statistical Characterization of Constitutive Parameters: Applications to Site Characterization and Seismic Performance Evaluation.- Chapter 5 A Graphical Approach to Modeling Dynamic Data Driven Applications Systems (DDDAS) for Dynamic Node Classification and Link Prediction.- Chapter 6 Uncertainty Analysis of Composite Laminates using Cohesive Layer with Polynomial Chaos and Machine Learning.- Chapter 7 Dynamic Data Driven Applications Systems Analysis of Microtexture Regions in Titanium Alloys.- Chapter 8 Decoupled Data based Control (D2C 2.0).- Chapter 9 A Computational Steering Framework for Large-Scale Composite Structures. Part II: Optimization and Control.- Chapter 10 A novel DDDAS architecture combining advanced sensing and simulation technologies for effective real-time structural health monitoring.- Chapter 11 Systems that Sense and Respond: Modeling, Analysis, and Control of Buildings.- Chapter 12 Deep Learning and Dynamic Mode Decomposition for Characterizing Combustion Instability.- Chapter 13 Reduced-order Modeling of a Nuclear Power Plant for Real-time Monitoring and Control.- Chapter 14 Dynamic Data-driven Estimation of Power System Linear Sensitivity Distribution Factors.- Chapter 15 Intelligent Energy Systems within the DDDAS Framework.- Chapter 16 Self-healing of Distributed Microgrids using DDDAMS.- Chapter 17 Computational and MR-guided Patient-Specific Laser Induced Thermal Therapy of Cancer.- Chapter 18 Advancing Intra-operative Precision: Dynamic Data-Driven Non-Rigid Registration for Enhanced Brain Tumor Resection in Image-Guided Neurosurgery.- Chapter 19 Human-Allied Learning of Probabilistic Models from Relational Data.- Chapter 20 Info-Symbiotic Systems for Emergencies Governance: Pandemics and Human Security.- Chapter 21 Adversarial Inference: From Inverse Filtering to Inverse Cognitive Radar.- Chapter 22 Distributed Dynamic Data Driven Multi-Threat Tracking.- Chapter 23 A Dynamic Data Driven Approach for Explainable Scene Understanding.- Chapter 24 Advances on Dynamic and Robust Tensor Data Analysis: The Dynamic L1-Tucker Method.- Chapter 25 Implementing a Trajectory Optimization Layer for Persistent Sampling Missions with Soaring.- Chapter 26 Data-driven Routing of Autonomous Vehicles for Distributed Estimation of Spatiotemporal Fields.- Chapter 27 Lane-Based Large-Scale UAS Traffic Management: Contingency Handling.- Chapter 28 Initial Orbit Determination of Resident Space Objects with Ck-networks.- Chapter 29 DDDAS @ 5G and Beyond 5G Networks for Resilient Communications.- Chapter 30 Infrastructures and Microgrid Clusters Dynamic Data-Driven Application Systems for Trust Dynamics.- Chapter 31 Resilient Machine Learning (rML) Ensemble Against Adversarial Machine Learning Attacks to Industrial Control Systems.- Chapter 32 Dynamic Data-Driven Digital Twins for Blockchain Dynamics.- Chapter 33 DDDAS and Security in Distributed Digital Nuclear Systems.- Chapter 34 Dynamic Data Driven Applications Systems (DDDAS) for Cyber Risk Management in Microgrids.- Chapter 35 Dynamic Data Driven Applications Systems (DDDAS) Perspectives and Outlook.ReviewsAuthor InformationErik P. Blasch, Ph.D./MBA, is a research engineer focused on information fusion performance evaluation, multi-modal image fusion, multi-domain avionics, space situational awareness, and human-machine integration He received his B.S. in Mechanical Engineering from the Massachusetts Institute of Technology and Ph.D. in Electrical Eng. from Wright State University in addition to numerous Master’s Degrees in Mech. Eng., Ind. Eng., Health Science, Elect. Eng., Economics, Psychology, Medicine, and Military Studies. His affiliations include adjunct associate professor, President of professional societies, member of the International Society of Information Fusion (ISIF) Evaluation of Techniques for Uncertainty Representation Working Group (ETURWG), and member of the IEEE Avionics Systems Technical Panel. He has compiled 16 books, 68 patents, 182+ journal papers, and 500+ peer-reviewed publications. His contributions include: physics-based and human-derived information fusion (PHIF), the data fusion information group (DFIG) model, confusion-matrix data fusion, game-theoretic space situational awareness, evidential reasoning simultaneous tracking and identification (STID) filtering, and the multisource AI scorecard table (MAST). He is the recipient of 21 performance medals, 8 named awards, as well as Fellow of AIAA (astronautics), IEEE (electrical), MSS (sensing), RAeS (aerospace), and SPIE (optical) societies. Frederica Darema, PhD, is the President and CEO of the InfoSymbiotic Systems Society. Retired (2019) as Senior Executive Service (SES) member and as Director of the Air Force Office of Scientific Research, in Arlington, Virginia, where she led the entire basic research S&T investments for the AF; also served in the Office of the Secretary of the Air Force, as Research Director in the Air Force’s Chief Data Office, and as Associate Deputy Assistant Secretary in the Air Force Office for Science, Technology and Engineering. Prior career history includes: Research Staff positions at the University of Pittsburgh, Brookhaven National Laboratory, and Schlumberger-Doll; management and executive-level positions at: T.J.Watson IBM Research Center and IBM Corporate Strategy Group; National Science Foundation and Defense Advanced Research Projects Agency; Director of the AFOSR Directorate for Information, Math, and Life Sciences. Dr. Darema received her PhD (University of California at Davis) in Nuclear Physics, and as Fulbright Scholar and Distinguished Scholar. She is IEEE Life Fellow; WAAS Fellow (World Academy of Arts and Sciences), among other distinctions. Made seminal contributions in computational sciences and the supercomputing field (pioneered: the SPMD computational model; and the DDDAS paradigm). She serves on university Advisory Boards and governmental research review panels; and she is co-Editor of the DDDAS Handbooks and Conferences Proceedings. Alex J. Aved, PhD, is a Senior Researcher with the Air Force Research Laboratory, Information Directorate, Rome, NY, USA. His research interests include multimedia databases, stream processing (via CPU, GPU, and emerging integrated circuit architectures), and dynamically executing models with feedback loops incorporating measurement and error data to improve the accuracy of the model. He has published over 100 papers and given numerous invited lectures. Previously, he was a programmer at the University of Central Florida and database administrator and programmer at Anderson University. 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