A Review on Demand Side Management Schemes for Optimized Energy Utilization in Smart Grids Ashok K. Muthria1and Lini Mathew2 1,2 Department of Electrical Engineering, NITTTR, Sector-26,Chandigarh ,160019,India ABSTRACT Smart grids are considered as the basic and fundamental technology through which environmental pollution and the user’s energy cost is reduced. The management of smart grids is done by various demands Side management (DSM) techniques to ensure that there is an efficient flow of power. But it is a complex task in real time as energy demands of consumers rise continuously in an unpredicted manner. A literature survey is conducted to get an overview about the role of heuristic techniques in demand side management. The review states that such algorithms are able to schedule the power cuts in an effective way which in turn minimizes the load on the power grids. But as there are number of heuristic algorithms available it will be a challenge to select the efficient approach. Moreover, the important factors such as load, cost etc. are also drawn out from the survey to help the future research to give an efficient DSM system. Keywords Demand side management, electrical systems, energy management, energy efficiency, etc. 1. INTRODUCTION With the increasing demand and use of the traditional fossil fuels like diesel and petrol and their high prices, it becomes extremely essential to use alternative ways in order to meet the future energy demands that are energy efficient and provide green and sustainable environment. The electricity grid is being transformed into a dependable and intelligent cyber physical system (CPS) in which information and communications technology (ICT) is integrated with the traditional grid to enhance their performance [1]. In addition to this various renewable energy resources such as wind, solar etc. are utilized along with the effective and novel DSM methods to meet the increasing demands [2]. DSM is a power supply strategy to enable customers to follow procedures and activities which are favourable to all parties. By doing so, all the abnormal activities that change the load demand can be analysed and amended [3]. However, the introduction of DSM raises the complexity in current power systems as DSM needs power system loads and generators, to be controlled. Consequently, there will be extra costs utilized in installing sensors, supplying encouragement to DSM and conducting general DSM tasks. In the smart grid, energy providers can transfer and deliver the power generated to customers with low running costs by using DSM techniques [4]. When demand for electricity is greater than output, the traditional approach raises the power generating unit and generates user electricity to satisfy their energy needs. However, this approach is not suitable due to the greenhouse effect. _____________________________ International Conference on Emerging Technologies: AI, IoT, and CPS for Science & Technology Applications, September 06–07, 2021, NITTTR Chandigarh, India EMAIL: ashokmuthria1976@gmail.com (A. 1); lini@nitttrchd.ac.in (A. 2) ORCID: 0000-0001-5371-9092 (A. 1); 0000-0002-3344-5378 (A. 2) ©2021 Copyright for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0). CEUR Workshop Proceedings (CEUR-WS.org) The issue of energy demand can be addressed by a proper DSM operation in which without adding an extra generator, the DSM handles and monitors the necessary energy for end users. It manages demand by introducing planning algorithms. The response to demand reduces energy consumption and prevents power grid overuse [5]. In addition, by enforcing proper scheduling practices, this would offer the cost advantage for customers and last for decades. Various DSM techniques are shown in Figure 1. Energy conservation, demand response and strategic load growth are the core components of DSM. The demand response is categorized into two categories i.e. Market-based program and reliability-based program. Figure 1: Tree diagram for different DSM techniques 1.1 Heuristic algorithms in DSM Most of the techniques use both linear and non-linear programming method to solve the DSM problem. However, these programming techniques cannot handle a large number of controllable devices which have several computation patterns and heuristics. They may not find a feasible solution when the computational time is too high or when the problems belong to non-convex programming, Mixed Integer Nonlinear Programming or nondeterministic polynomial time (NP-hard) problems. These issues can be solved by using heuristic-based evolutionary algorithm that provides a fast and best optimal solution [6]. The heuristic based methods like genetic algorithm, Ant Colony Optimization and Particle Swarm Optimization (PSO) can search very large spaces of candidate solutions and find globally optimal solution in polynomial time. In addition to this, various other optimization algorithms were used which are discussed in section 2 and Table 1. 2. RELATED WORK Significant studies have been proposed, and this section presents the works done in this field. Hussain et al. [7], implemented a home energy management system based on the genetic algorithm (GA) and the harmony search algorithm (HSA), to minimize energy costs and the peak to average ratio. Xu et al. [8], the uncertain optimization approach was turned into a convex optimization question by implementing the probability theory. Vatul et al. [9], carried out the DSM strategy on two systems first was on the RTS 24 bus system with wind energy sources spread at some system nodes and second on the institutional load of the built solar power plant to minimize the customer's utility bills. An immediate billing. Supriya P. [10], addressed a Game Theoretical Approach for Demand Side Management based on Nash Equilibrium (NE) utilizing consumer-based priority load control, by considering the power deficit. Nawaz et al. [11], described the use of Hybrid Bacterial Foraging and Particle Swarm Optimization (HBFPSO) method for determining the DSM strategy to meet all four fairly independent goals simultaneously, minimized cost, PAR, CO2 emission, and user discomfort, to return optimal consumer power use schedule. Jian et. al. [12], developed the generating firm, the grid organization and the society's avoidable expense model for various DSM investment programs. Hamrouni. [13], An advanced protocol with the combination of two algorithms Energy Scheduling and Distributed Storage (ESDS) and Microgrid Energy Management Distributed Optimization Algorithm was given that provides benefits to users. Philipo et al. [14], designed an algorithm to simulate the daily powers patterns of consumers or users of residential regions for load shifting and scheduled load reduction. Gupta et al. [15], proposed a combined Multi-Objective Dynamic Economic and Emission Dispatch model (MODEED) with DSM, to study on the generation side the benefits of DSM. Vatul, et al. [16], proposed the instantaneous pricing system to minimize the supply gap for consumers vulnerable to electricity prices. Lin. [17], presented an electrical energy management system (EMS) architecture based on cloud analytics that has edge analysis with push notifications for DSM. Hecht et al. [18], provided a significant assessment of DSM techniques to produces extremely realistic findings that would be utilized for evaluating the efficacy of several load shifting methods. Sarker et al. [19], reviewed the algorithms and approaches that were utilized in the DSM applications in SG, and for efficient implementations, the researchers of this paper also reviewed the issues faces by DSM techniques. Talwariya et al. [20], carried out residential load-scheduling by utilizing EMC (Energy Management Controller). Pilz et al. [21], proposed a DSM strategy based on the potential technology for consumer's residential neighbourhoods. Anand Vatul et al. [22], evaluated the DSM strategies on an institutional load with installed RES to reduce peak demand. Tai et al. [23] suggested method using real- time multi-agent deep reinforcement learning to lower the peak time value, the power cost, and the PAR value. Kaddour et al. [24], implemented isolation forest, one class SVM and k-means algorithms to identify abnormal usage of electricity by users. Other than this few more studies are available in domain of DSM [25], [26], [27], and [28]. Table 1 Summary of related work done by various researchers Author Name Methodology used Advantages Disadvantages & Publication year Hussainet al., Implemented a home energy Reduced the electricity Causes loads in [7], 2020 management system based on the cost of users. winter season as issue of energy reallocation and used appliances. GA and HAS. Xu et al., [8], A random disturbance and quasi Improves the utility of Slow 2020 newton method is applied to consumers as well as convergence minimize the electricity bills. reduce the cost of rate. energy consumption. Vatul et al., Analyzed the proposed DSM strategy Ensures optimum load - [9], 2020 on two systems first was on the RTS and minimized the 24 bus system with wind energy electricity bills for sources and on institutional load of customers. the built solar power plant. Supriya., [10], Presented a Game theoretical Performs well in smart NE is inefficient 2019 Approach for DSM based on NE grid systems for and mutually utilizing consumer-based priority predicting loads. beneficial output. load control, by considering the power deficit. Nawaz et al., Implemented HBFPSO method for Reduced the cost or PSO gets stucked [11], 2020 determining the DSM strategy to electricity, peak average in local minima minimize cost, PAR, CO2 emission, ratio. while as, BFO has and user discomfort. slow convergence rate. Jian et al., Introduced an extensive unit cost Reduced load and Energy density is [12], 2018 model for the power grid, which electricity bills. low and takes account of the allocation factor complicated. to represent the different value of load decreased in different time. Hamrouni., Demonstrated that the energy Minimizes the load, Complex and [13], 2020 consumption optimization, energy is optimized. costly. distributed storage and generation helps in combined form for demand side management approaches. Philipo et al., Designed an algorithm to simulate Save up to 4.87% of - [14], 2020 the daily powers patterns of energy and 19.23% consumers or users of residential reduction in electricity regions. bills. Gupta and Proposed a combined Multi- Provides benefits to Highly Subramani., Objective Dynamic Economic and users and companies by dimensional, [15], 2018 Emission Dispatch model with DSM. shifting the loads coupled effectively. nonlinear multi objective. Vatul et al., Proposed the instantaneous pricing Additional power is Difficult to [16], 2019 system to minimize the supply gap generated by reducing implement and for consumers vulnerable to the peak demand. costly. electricity prices. Lin., [17], Presented an electrical EMS Minimize the electricity Not secure and 2019 architecture that is based on cloud consumption cost and can result in data analytics and has edge analysis with carbon dioxide loss push notifications for DSM. emissions. Hecht et al., Provided a significant assessment of Decreases the Insufficient [18], 2021 DSM techniques. consumption of energy planning and lack in grids and thus of information. enhanced the efficiency of load shifting method. Sarker et al., Reviewed the algorithms and Minimize the carbon SG face [19], 2020 approaches that were utilized in the emission, cost and peak challenges like DSM applications in SG. to average ratio. Also, it reliability, data improves the delivery and convergence rate. interoperability. Talwariya et Proposed heuristic-based EMC to Regulates load and - al., [20], 2020 Carry out residential load- reduce the power scheduling. consumption. Pilz et al., Proposed a DSM strategy based on Robust and reliable . - [21], 2020 the potential technology for consumer's residential neighborhood. AnandVatul Evaluated the DSM strategies on an Reduces the gap Costly and et al., [22], institutional load with installed RES. between supply and difficult to 2019 demand power. establish. Tai et al., Proposed a real-time multi-agent Reduces electricity bills, Lead to [23], 2019 deep reinforcement learning to solve peak to average ratio overloading. issues related to DSM in HAN. and PAR value as well. Kaddour et al. Implemented isolation forest, one Reduced load - [24], 2021 class SVM and k-means algorithms to identify abnormal usage of electricity by users. 3. CONCLUSION This paper presents a brief overview for the available DSM methods in power systems. It is observed from the literature study that DSM problems may vary under different operating conditions. Number of optimization techniques such as Heuristic approach, Game energy theory, Home energy management (HEM) etc. were proposed by researchers to solve different DSM issues such as overloading of the power grids, costs, power scheduling, demand response etc. Most of the researches were done on the basis of the standard dataset to work on real-time scenarios. After analyzing the various papers based on DSM we find that there is still a scope of improvement in these techniques in order make smart grids more efficient. Moreover, if these improved DSM techniques will be used in future, a balance can be achieved between the supply and energy demand of customers. 4. REFERENCES [1] Tafseer Akhtar and B.B. 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