Abstract
The rapid urbanization that has occurred across the globe has
intensified the demand for energy-efficient infrastructures in the smart
city domain. Conventional control strategies have struggled to address
the dynamic, nonlinear, and uncertain nature of urban energy systems.
Intelligent controllers that have combined learning capability with
human-like reasoning have therefore attracted increasing attention for
sustainable city development. Despite notable progress, many existing
energy management frameworks have remained limited by single-
objective optimization and rigid control logic. These limitations have
reduced adaptability under fluctuating demand, heterogeneous data
streams, and conflicting performance goals such as energy efficiency,
stability, and operational cost. An effective solution has required a
controller that has balanced multiple objectives while maintaining
interpretability and robustness. This study has proposed a multi-
objective neuro-fuzzy controller that has integrated fuzzy inference
with neural learning for smart city energy management. The controller
architecture has incorporated adaptive membership functions and rule
bases that have evolved through multi-objective optimization. Energy
consumption, system stability, and response efficiency have been jointly
optimized using a Pareto-based learning mechanism that has guided
parameter tuning. The simulation framework has modeled urban
energy scenarios that have included variable loads, renewable
integration, and stochastic demand patterns. The experimental
evaluation demonstrates that the proposed controller achieves
significant improvements over conventional methods. Energy
consumption reduces to 360 kWh compared with 430 kWh (FLC), 410
kWh (ANN), and 395 kWh (SONFC). Stability index increases to 0.93,
and response time decreases to 1.2 s. Energy savings reach 21.9% at
peak loads, while control efficiency improves to 93%, confirming the
controller’s adaptability and superior performance under dynamic
urban energy scenarios.
Authors
M. Subi Stalin1, K. Kalaiselvan2
P.B. College of Engineering, India1, Dhanalakshmi Srinivasan Engineering College, India2
Keywords
Neuro-Fuzzy Control, Smart City Energy Management, Multi- Objective Optimization, Energy Efficiency, Intelligent Controllers