Abstract

Typically, the main control on alternating current (AC) power systems is performed by the scheduling of rotary machines of synchronous generators and static machines of on-load tap changer (OLTC) transformers and volt-ampere reactive (VAR) sources. Large machines of synchronous generators can be managed by utilizing terminal voltage control when synchronized in parallel to the power system. These machines are typically terminal voltage regulated. In addition, substation on-load tap changer (OLTC) transformers improve system voltage management by controlling variable turn ratios that are adjusted in different levels known as taps along either the primary or secondary winding. Moreover, volt-ampere reactive (VAR) sources of static VAR compensators (SVCs), which are automated impedance devices connected to the AC power network, are designed for voltage regulation and system stabilization. In this paper, scheduling of these machines is coordinated for optimal power system operation (OPSO) using a recent algorithm of social network search optimizer (SNSO). The OPSO is performed by achieving many optimization targets of cost of fuel, power losses, and polluting emissions. The SNS is a recent optimizer that is inspired from users in social networks throughout the different moods of users such as imitation, conversation, disputation, and innovation mood. The SNSO is developed for handling the OPSO problem and applied on an IEEE standardized 57-bus power system and real Egyptian power system of the West Delta area. The developed SNSO is used in various assessments and quantitative analyses with various contemporary techniques. The simulated findings prove the developed SNSO’s solution accuracy and resilience when compared to other relevant techniques in the literature.

Highlights

  • The principal management of alternating current (AC) power systems is often operated by the scheduling of synchronous generator rotary machines and static machines of on-load tap changer (OLTC) transformers and volt-ampere reactive (VAR) sources

  • A scheduling of synchronous generator rotary machines and static machines of on-load tap changer (OLTC) transformers and volt-ampere reactive (VAR) sources is coordinated for optimal power system operation (OPSO) using a recent algorithm of social network search Optimizer (SNSO)

  • High validation is illustrated based on the social network search optimizer (SNSO) for the optimal scheduling of synchronous generator rotary machines and static machines of on-load tap changer (OLTC) transformers and Volt-Ampere Reactive (VAR) sources

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Summary

Introduction

Many objective functions were taken into account of improving the reliability, minimizing the investment costs, reducing the power losses, and minimizing the environmental emissions but they were handled in a single objective model Despite these performed applications for solving the OPSO, the simplifications by ignoring the reactive power injections from capacitive sources and transformer tap settings potentially lead to inaccurate results. A scheduling of synchronous generator rotary machines and static machines of on-load tap changer (OLTC) transformers and volt-ampere reactive (VAR) sources is coordinated for optimal power system operation (OPSO) using a recent algorithm of social network search Optimizer (SNSO). High validation is illustrated based on the SNSO for the optimal scheduling of synchronous generator rotary machines and static machines of on-load tap changer (OLTC) transformers and Volt-Ampere Reactive (VAR) sources.

Problem Formulation
Problem Objectives
System Constraints
Developed SNSO for OPSO in Power Systems
Conversations
Disputations
Innovations
Rules Related to Network
Rules for Publishing
Developed SNSO for OPSO
SNSO Development for Including Opertaional Limits of Dependent Variables
Simulation Results
The First System Results
Convergence
Validations of Operation for Rotary and Static Machines in the IEEE 57-Bus
The Second System Results
The Second
Assessment of the Stability of the Developed SNSO for WDA Power System
Assessment of the Stability of the Developed SNSO for WDA Power Syste
Validations of Operation
Computational Burden of the Developed SNSO for Both Systems
Conclusions
Full Text
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