E-Book, Englisch, 244 Seiten
Nandhini / Manoj / Lakshmi Cognitive Computing with Intelligent Engineering Platforms
1. Auflage 2026
ISBN: 979-8-89881-441-0
Verlag: De Gruyter
Format: EPUB
Kopierschutz: 0 - No protection
E-Book, Englisch, 244 Seiten
ISBN: 979-8-89881-441-0
Verlag: De Gruyter
Format: EPUB
Kopierschutz: 0 - No protection
Cognitive Computing with Intelligent Engineering Platforms is an explorative study anchored in the transformative role of cloud-based artificial intelligence and cognitive computing in advancing smart engineering systems across industrial, urban, energy, and healthcare domains. The volume highlights how AI-driven platforms, Industrial IoT, and cloud infrastructures are reshaping decision-making, control systems and human-machine collaboration.
Through focused chapters, the book examines AI-powered control architectures, cognitive technologies for smart manufacturing, and intelligent support systems for operators in next-generation industries. It further addresses collaborative energy management for smart cities using hybrid optimisation and IoT data fusion, advanced deep learning models for real-time electric vehicle battery state-of-charge estimation, and cognitive Industrial IoT applications in healthcare for intelligent care delivery. By integrating theoretical models with applied case studies, the book offers a holistic perspective on intelligent, sustainable, and human-centric engineering solutions.
Key Features
Integrated perspectives on cloud-based AI with smart engineering platforms
Focus on cognitive computing and Industry 5.0 paradigms
Discusses applications across manufacturing, energy, EV systems, smart cities, and healthcare
Presents advanced AI models for real-time monitoring and optimisation
Emphasises on sustainability, human-AI collaboration, and intelligent automation
Autoren/Hrsg.
Weitere Infos & Material
Cloud-based AI Solutions for Smart Engineering Platforms
Ashish Kumar Dass1, Subratansu Panigrahi1, *, Subhashree Sahu1
Abstract
Incorporation of cloud-based Artificial Intelligence (AI) systems into innovative engineering platforms has revolutionized the engineering processes of design, management, and optimization. With AI, ML, and cloud computing, organizations can effectively analyze vast volumes of data, enabling intelligent decision-making, predictive maintenance, and optimized workflows. Cloud services provide the infrastructure needed to deploy AI at scale, enabling real-time data analysis to predict equipment failures, reduce downtime, and allocate resources in response to fluctuating project requirements. The fusion of the Internet of Things (IoT) and cloud-based AI makes clever engineering even smarter, enabling real-time decision-making and thereby optimizing energy use in smart buildings, regulating traffic in smart cities, and improving technological efficiency. Another significant benefit of security is that an AI-powered cloud platform analyzes the network traffic and seeks anomalies and cyber threats autonomously. In addition, the cloud enables engineering teams to collaborate smoothly from different locations using a shared dataset and tools. Cloud-based Artificial Intelligence is transforming modern engineering practices by enabling predictive analytics, dynamic asset management, IoT integration, improved security, and collective innovation. This research paper examines successful instances, citing case studies and best practices that demonstrate the impact of such technologies on Smart engineering.
* Corresponding Author Subratansu Panigrahi: Department of Computer Science and Engineering, NIST University, Berhampur, Odisha, India; E-mail: subratansu25@gmail.com
INTRODUCTION
The adoption of cloud-based Artificial Intelligence (AI) into innovative engineering platforms represents a milestone in the evolution of the engineering discipline. As organizations capitalize on large volumes of data collected from various sources, the integration of AI, Machine Learning (ML), and cloud technologies has also become a decisive enabler of improvement in engineering processes [1]. This revolutionary change is not just a trend; it also manifests a radical renewal of how engineering efforts are engineered, managed, and optimized. Cloud computing provides the requisite infrastructure, enabling the deployment of AI/ML algorithms at scale. In addition to its general effectiveness, this capability allows engineers to process and analyze real-time data, run more complex algorithms on large datasets, identify patterns, predict outcomes, and optimize workflows [2]. For example, Intelligent Maintenance is a prominent application of cloud-based AI solutions. By analyzing records from machinery and other devices, these systems can predict future growth before it occurs, substantially increasing efficiency and reducing maintenance costs. Additionally, the scalability embedded in cloud services enables organizations to flexibly adjust the distribution of their resources in response to anticipated changes in project demand. This degree of flexibility is beneficial in engineering projects where there are considerable variations in the amounts of work involved. Cloud-based AI solutions oversee dynamic resource management through automated scaling and other mechanisms, ensuring all engineering teams have access to computational power without overspending. The integration of the Internet of Things (IoT) and cloud-based AI provides innovative engineering platforms with integrated capabilities. IoT devices generate an ongoing stream of data that can be processed in real time using cloud infrastructure. That functionality enables on-the-spot decisions in the present situation, for instance, optimizing ECO usage in smart buildings or traffic management in smart cities [3].
The fact that it can analyze data from many connected devices simultaneously makes its decision-making more informed and its operations much more efficient. Security is also an essential part of this landscape. As cyber threats become increasingly sophisticated, there is an obligation to use AI for security monitoring and threat detection. Cloud platforms with advanced machine learning algorithms, such as reinforcement learning and decision trees, can analyze network traffic to detect anomalous behavior or potential breaches, enabling a proactive cybersecurity approach. Additionally, the collaborative nature of cloud computing promotes innovation within engineering teams. By leveraging common cloud resources, engineers can collaborate across borders, using the same tools and datasets. An efficient environment that supports collaborative work speeds up the development cycle, allowing teams to bring products to market faster without compromising high-quality requirements. In conclusion, integrating cloud-based AI solutions is altering engineering practices by making it easier to build predictive analytics, improve resource management, integrate IoT capabilities, implement stronger security measures, and foster greater collaboration. As organizations move to embrace further digital transformation, synergy among AI, machine learning, and cloud computing will play an integral role in shaping the future of engineering practices. This research aims to explore these themes further, bringing case studies and best practices into the light to showcase how accurately cloud-based AI solutions have been implemented in smart engineering settings.
THEORETICAL FRAMEWORK
The implementation of cloud-based Artificial Intelligence (AI) solutions within innovative engineering platforms represents a paradigm shift in modern engineering. The framework is based on three key pillars: cloud-to-computing, Artificial Intelligence and Machine Learning (AI/ML), and innovative engineering platforms. Every pillar plays a vital role in remodeling engineering processes, streamlining processes, and improving management practices. Cloud computing is the bedrock of such integration, providing an expansive, flexible environment for running AI and ML algorithms. The theoretical background is distributed systems and virtualization technologies that enable easy access to significant computational resources [4]. Cloud platforms can process real-time data in engineering settings, where decisions need to be made based on rapidly changing streams of data. This ability is critical in applications that require immediate response, such as Proactive Maintenance and operational analytics.
Artificial Intelligence (AI) and Machine Learning (ML) are critical for understanding complex data in engineering. The technologies underpinning these solutions are based on statistical modeling and computational learning theories to enable predictive analytics, anomaly detection, and workflow optimization. Such abilities are essential in cases such as Smart Maintenance, where analysis of traditional equipment data can avert operational failures. The incorporation of AI/ML into cloud environments increases resource allocation, reduces security measures, and enables sophisticated decision-making through predictive modeling.
Innovative engineering platforms serve as the foundation for cloud-based AI solutions [5]. Such platforms leverage a range of tools and technologies to optimize engineering workflows, foster collaboration, and improve decision-making. Theoretical frameworks of innovative engineering platforms underline their role as mediators between physical systems (e.g., IoT devices) and computational systems (e.g., AI-driven analytics). This synergy results in better operational efficiency and innovation within engineering practice. The convergence of these three pillars is further made powerful by innovations in Internet of Things (IoT) technologies. IoT devices produce a continuous stream of real-time data, which cloud-based AI systems process to enable dynamic decision-making. This interaction fits within the realm of cyber-physical systems, where physical components interact intricately with computational components. Engineered applications are enhanced in scalability and responsiveness through the integration of IoT with cloud-based AI.
This theoretical framework emphasizes the examination of cloud-based AI applications in innovative engineering environments. It highlights critical aspects such as scalability, predictive analytics, resource optimization, and improved collaboration as core catalysts of innovation and efficacies of contemporary engineering practice. With further development, the...




