Integrated Predictive Intelligence for Critical Decision Systems: A Comparative Research Framework Linking Machine Learning in Residential Energy Management and Disease Risk Prediction
Abstract
Background: Machine learning has increasingly become a foundational tool in domains where uncertainty, optimization, and risk-sensitive decision making are central. Two such domains are residential and distributed energy management and health-related predictive analytics, particularly cardiovascular disease and cancer-oriented prediction systems. Although these fields are often studied separately, the references provided for this article reveal strong conceptual parallels. Both domains rely on forecasting, classification, prioritization, resource allocation, and intelligent support under uncertainty. In energy systems, machine learning and optimization are used to size photovoltaic-battery energy storage systems, schedule household loads, manage tariffs, and improve distributed energy use. In healthcare, machine learning is used to predict cardiovascular risk, classify disease states, and support diagnostic interpretation.
Objective: This study develops a publication-ready comparative research article that synthesizes the provided literature into a unified conceptual framework for predictive intelligence across residential energy systems and disease prediction environments. The goal is to identify shared principles, methodological convergences, domain-specific differences, and implications for future intelligent decision systems.
Methodology: A qualitative integrative research design was adopted using only the references supplied in the prompt. The literature was grouped into two principal domains: AI-enabled energy management and machine learning-based disease prediction. A structured thematic synthesis was then conducted across model design, optimization logic, prediction goals, operational uncertainty, personalization, cost sensitivity, and deployment implications.
Results: The analysis shows that both domains are shaped by a common architecture of predictive intelligence: data acquisition, model construction, uncertainty management, constrained optimization, and decision support. Energy studies emphasize storage sizing, tariff-aware scheduling, photovoltaic-battery coordination, and techno-economic trade-offs. Healthcare studies emphasize risk stratification, disease classification, hybrid modeling, and clinically relevant prediction. Despite different application contexts, both literatures converge around personalization, multistage decision support, hybrid intelligence, and the need to balance predictive accuracy with practical usability.
Conclusion: The study argues that residential energy management and disease prediction should be understood as structurally related forms of intelligent decision engineering. Future research should prioritize explainable, adaptive, human-centered, and cost-aware predictive systems capable of operating reliably in real-world settings.
Keywords
References
Similar Articles
- Dr. Neha Gupta, An Organizational Autonomous Systems Design Blueprint for Regulating Intelligent Agents and Adaptive Scaling , International Journal of Next-Generation Engineering and Technology: Vol. 3 No. 02 (2026): Volume 03 Issue 02
- Dr. Thabo Ndlovu, Application of Interactive Data Systems and Modern Visualization Environments for Immediate Analysis , International Journal of Next-Generation Engineering and Technology: Vol. 3 No. 03 (2026): Volume 03 Issue 03
- Dr. Ahmed A. Al-Mansoori, Dr. Fatimah H. Zayed, RENEWABLE DISTRIBUTED GENERATION: TRANSFORMING POWER SYSTEMS FOR A SUSTAINABLE FUTURE , International Journal of Next-Generation Engineering and Technology: Vol. 2 No. 04 (2025): Volume 02 Issue 04
- Dr. Andre Castillo, Role of Smart Digital Technologies in Enhancing Regulatory Alignment and Formal Documentation , International Journal of Next-Generation Engineering and Technology: Vol. 3 No. 02 (2026): Volume 03 Issue 02
- Dr. Hao P. Zhou, Dr. Yong H. Liu, DRIVING SUSTAINABLE DEVELOPMENT IN CHINA: THE CRUCIAL ROLE OF TECHNOLOGY-ENHANCED ENERGY EFFICIENCY , International Journal of Next-Generation Engineering and Technology: Vol. 2 No. 07 (2025): Volume 02 Issue 07
- Veherinskyi Taras Ihorovych, Optimization of Hydraulic System Operation in Agricultural Machinery for The Purpose of Reducing Energy Consumption , International Journal of Next-Generation Engineering and Technology: Vol. 1 No. 01 (2024): Volume 01 Issue 01
- Linh Thuy Nguyen, Kofi Mensah, OPTIMIZING SOFTWARE EFFORT ESTIMATION: A SYNERGISTIC HYBRID DEEP LEARNING FRAMEWORK WITH ENHANCED METAHEURISTIC OPTIMIZATION , International Journal of Next-Generation Engineering and Technology: Vol. 2 No. 11 (2025): Volume 02 Issue 11
- Sneha Reddy, Optimizing Complex Processing Ecosystems using Event-Centric Approaches for Enhanced Durability , International Journal of Next-Generation Engineering and Technology: Vol. 2 No. 04 (2025): Volume 02 Issue 04
- Andras Varga, A Socio-Technical Framework for Error Budget–Driven Reliability Governance in Cloud-Native and Edge-Integrated Distributed Systems , International Journal of Next-Generation Engineering and Technology: Vol. 3 No. 01 (2026): Volume 03 Issue 01
- Dr. Michael R. Thompson, Architecting Scalable Leader Selection and Community-Aware Coordination in Distributed Systems: A Submodular and Network-Theoretic Perspective , International Journal of Next-Generation Engineering and Technology: Vol. 2 No. 12 (2025): Volume 02 Issue 12
You may also start an advanced similarity search for this article.