
AI for Sustainable and Resilient Systems Engineering
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AI for Sustainable and Resilient Systems Engineering offers a comprehensive and forward-looking exploration of how artificial intelligence (AI) is transforming the design, operation, and stewardship of critical infrastructure in the 21st century. The text is structured to guide the reader from foundational concepts to advanced applications, always with a keen eye on the intertwined imperatives of sustainability, resilience, and social equity. The opening chapters establish the context: modern infrastructure systems-spanning transportation, energy, water, and the built environment-are facing un...
AI for Sustainable and Resilient Systems Engineering offers a comprehensive and forward-looking exploration of how artificial intelligence (AI) is transforming the design, operation, and stewardship of critical infrastructure in the 21st century. The text is structured to guide the reader from foundational concepts to advanced applications, always with a keen eye on the intertwined imperatives of sustainability, resilience, and social equity. The opening chapters establish the context: modern infrastructure systems-spanning transportation, energy, water, and the built environment-are facing unprecedented challenges. These include aging assets, rapid urbanization, climate change, resource constraints, and the need for innovation beyond incremental improvements. The book argues that traditional engineering approaches, often siloed and deterministic, are increasingly inadequate for addressing the complexity and interconnectedness of contemporary infrastructure. Instead, a paradigm shift is required: one that embraces systems thinking, lifecycle assessment, and the "triple bottom line" of environmental, social, and economic sustainability. Central to this transformation is the integration of AI and data science. The text provides a rigorous yet accessible introduction to core AI paradigms-supervised, unsupervised, and reinforcement learning-along with essential practices in data preprocessing, feature engineering, and model evaluation. These foundations are then contextualized within engineering, illustrating how AI can be harnessed for tasks such as time-series forecasting (e.g., predicting resource demand), optimization under uncertainty, and anomaly detection in real-time monitoring systems. A recurring theme is the move from reactive to proactive management. For example, in water and energy systems, AI enables predictive maintenance, optimizing asset lifecycles and reducing unplanned downtime. In transportation, AI-driven traffic flow prediction and adaptive signal control promise to alleviate congestion and reduce emissions. The text also delves into the use of deep learning architectures-such as LSTMs, CNNs, and autoencoders-for complex tasks like structural health monitoring, failure prediction, and environmental impact assessment. Crucially, the book does not treat technology in isolation. It devotes significant attention to the socio-technical dimensions of infrastructure, emphasizing equity, accessibility, and stakeholder engagement. AI is positioned not only as a tool for efficiency but as a means to identify and address disparities in service provision, optimize resource distribution, and foster participatory design. Ethical considerations-bias, transparency, accountability-are foregrounded, with practical frameworks for responsible AI deployment. The latter chapters survey emerging trends, including edge AI, digital twins, explainable AI, and the convergence of AI with IoT and blockchain. These technologies are shown to underpin the next generation of resilient infrastructure, capable of adapting to climate change, cyber threats, and evolving societal needs. The capstone case study of a resilient urban water grid synthesizes these concepts, demonstrating how AI can orchestrate demand forecasting, leak detection, water quality assurance, and predictive maintenance in a holistic, adaptive system. Ultimately, the text envisions the future engineer as a collaborative partner with AI-one who combines technical acumen with ethical stewardship, systems thinking, and a commitment to sustainability and social good. The book is both a technical manual and a manifesto for reimagining infrastructure in an era defined by complexity, uncertainty, and the urgent need for resilience.