Power systems nowadays are facing various challenges such as fossil energy consumption on a large scale, increased carbon emissions, and the growing importance of energy and environmental issues. Therefore, a shift towards a reliable, effective, and sustainable energy system has become the current requirement. Smart Grids are being deployed worldwide due to their ability to improve the efficiency, dependability, and security of the power system [
1]. This knits together a multidisciplinary approach such as multiple energy resources, sophisticated sensors and automated metering for control, two-way communications, intelligent electrical distribution equipment, and cutting-edge computing systems [
2]. All the above technology together helps to respond to changes in electric demand and provides benefits to both suppliers and consumers such as integration of renewable energy resources (RES), increase in the reliability of operation, help in reducing operation and maintenance costs for the utilities, and also provision of real-time information to consumers about their power consumption pattern that helps them to shuffle their load as per tariff. The change in electricity consumption patterns by consumers that helps the utility to balance supply and demand is known as demand response (DR) [
3]. DR can provide secured operation and reduce the need for investment in inefficient peaking power plants through load curtailment and shifting. It can provide consumers with time-varying prices of electricity and incentives to ensure the economical and efficient use of energy. Moreover, the DR program helps to enhance the reliability of the power system, and therefore, the consumer obtains the advantage of more stable power with lower outages [
4]. However, uncertainty associated with RES, social, economic, and environmental impact needs to be investigated.
The challenges of DR programs include the absence of suitable market mechanisms in the existing market structures. The need to maintain the safety of the system is subtly transferred from the utility to the end-user by switching to a system in which price adaptive demand is used to deliver various system functions. For DR modeling generally, the following assumptions are taken into consideration: its economically rational behavior, aggregated demand with different load types, and in-depth system and demand knowledge [
5]. DR programs can be applied to residential, commercial, and industrial sectors. They are categorized into two types: (i) incentive-based, where the customers receive incentives for altering their consumption habits under supply-side demands, and (ii) price-based, in which the cost of electricity supply is taxed at various rates depending on when they use electricity [
6]. In recent years, researchers have shown their interest in DR, and they have published various articles.
1.1. Literature Review
Several research works have been conducted with one or more objectives among the following: minimization of operation cost, minimization of carbon emissions, minimization of the electric bill of consumers, maximizing the profit of system operator, reliability of the overall system, etc. The impact of the operational cost incurred with and without coordination of different distributed energy resources (DER) is investigated using PSO [
7]. It helps to make proper tariff arrangements under the above two scenarios of DER arrangements. Optimum generation scheduling of a grid-connected microgrid system equipped with solar PV system, wind, and diesel generator is carried out in [
8,
9]. Here, incentive-based DR is incorporated to maximize operator benefit. DR maximizes the profit of the operator and also facilitates consumers by an incentive for controlling their load during peak load time [
10,
11]. A fair comparison under two scenarios, i.e., with and without implementation of DR for a MG system, was made, which shows the significant probability of energy saving through DR as it also helps to curtail the electric bill of consumers.
The DR program helps to optimize power generation costs by shifting energy consumption patterns and the possible reduction of load by the consumer, whereas rescheduling different DER as per day ahead load demand helps to reduce the generation cost for the operator. In Reference [
12], the DR program has been implemented on a grid-connected 33-bus system comprised of RES. The simulation analysis carried out in the paper claims that a significant reduction in network power loss and hence increase in the profit of operators can be achieved by it. A multiperiod optimal power flow approach is investigated on IEEE 9 and IEEE 118 bus systems using linear programming. Here, it was observed that the DR program in the network helps to provide a cost-effective solution and also improves the voltage stability of the system [
13]. A residential microgrid system is a complex network since it combines different energy resources, and energy storage systems to fulfill the required load demand of various loads of appliances of building premises. For this Incentive based DR (IBDR) was applied to enhance reliability. IBDR was found to be effective in reducing the overall operational cost of microgrids [
14,
15,
16]. In Reference [
17] IBDR with one selling price among two industrial consumers was analyzed with variation in discomfort weight factor. Here, also IBDR was found to be effective in solving demand deficit issues.
A day-ahead dynamic price-based DR modal was proposed with the operation of microturbines with uncertain RES on an hourly basis to maximize the economic benefit [
18,
19]. This model was found to be effective in achieving higher profits with lower voltage deviation than the conventional strategy. Moreover, proper scheduling of load helps to reduce the size of DER, improves the load factor of the whole system [
20], and is able to maintain the balance between supply and demand efficiently [
21,
22]. Cogeneration refers to the simultaneous production of thermal and electric energy from a single source. This helps to reduce carbon emissions and cost of energy and also improves the overall efficiency of the system [
23]. A grid-connected home energy system, which combines fuel cell (FC) with combined heat and power, and a battery storage system (BSS) have been considered for optimal scheduling. Analysis was carried out under two different scenarios ((i) without BSS with fixed tariff and (ii) with BSS and dynamic tariff [
24]), combining FC and Gas turbine plants with combined heat and power (CHP) [
25] and using a grid-connected hybrid PV with storage [
26]. Simulation results carried out under different operational constraints show that optimal scheduling of thermal and electric generation significantly reduces the overall operational cost.
The high share of integrated RES contributes more economical benefits, reduces greenhouse emissions from the environment, and provides better energy security. To analyze the economic and environmental benefits, a DR program was conducted on the residential MG system [
27,
28,
29,
30,
31], CHP-based reconfigurable MG system [
32], demand response analysis framework with multiple BSS [
33], and CHP-based MG with multiple markets [
34]. The cost of the MG emitted emission and the demand cost are optimized simultaneously by linear programming. The ε-constraints method is used to solve multi-objective (MO) problems whereas the scenario generation and reduction approach was used as a tool to handle uncertainty associated with RES [
34]. MO scheduling for a CHP-based MG tied with compressed air energy storage has been carried out using the ε-constraints method [
27]. To find out the optimal solution, the fuzzy decision approach was used, showing that it helps to reduce operating costs and emissions significantly.
For a grid-connected residential MG that knits together RES and BSS, NGSA III was used to minimize consumption cost, inconvenience cost, and pollution [
28]. The impact of using biomass and seawater electrolyzers on operational costs and emitted greenhouse emissions for residential MG systems empowered by RES and hydrogen power has been investigated under different cases [
29]. Here, it was observed that biomass integration helps to reduce operating costs whereas FC integrated with seawater electrolyzer reduces emissions significantly. A new demand response analytical framework (DRAF) was analyzed in a python environment for (i) DR in the production process, (ii) design optimization of battery with a PV system, and (iii) DR of distributed thermal energy resources. It was observed that using Pareto front through Price based DR, cost and emissions are reduced [
33].
A critical review in the area of DR problems can be found in [
4,
5,
6,
35,
36]. Moreover, the chronological framework of the work carried out in the area of DR with the objective and applied solution methodology is presented in
Table 1 below.
Designing an efficient DR program for an efficient energy management system is very difficult due to its complex structure. These complexities arise due to the uncertainty of DER, the unpredictable pattern of energy consumption, and complicated connected appliance loads. For the solution of such a highly complex constrained optimization problem, researchers have applied various analytical as well as nature-inspired (NI) algorithms until now. Among the analytical approaches, game theory [
8], linear programming (LP) [
11,
13,
34], Monte-Carlo simulation [
15], and mixed integer nonlinear programming (MINLP) [
31,
33,
34] were used to solve this problem.. The NI algorithms include particle swarm optimization (PSO) [
7,
17], grey wolf optimizer [
9], Genetic Algorithm (GA) [
10,
26], Jaya algorithm [
22], Artificial Bee Colony Algorithm (ABC) [
26], and NSGA-III [
28]. The NI technique is found to be very effective for the solution of nonlinear, discontinuous, and multi-modal functions, and it mostly provides a reasonable solution efficiently [
38,
39].
Energy management in the residential sector is very important as connected appliances in it consume the major part of the power generated by the energy sector. Here, the primary function is to minimize the operational cost associated with fulfilling the demand for the connected appliances in the building. Therefore, designing an effective DR model for it with the complicated operational constraints and an effective solution is a difficult task. It needs a robust optimization technique to solve such type of complex constrained optimization problem. The “no free lunch theorem” states that no algorithm can guarantee to solve all types of optimization problems, as there is always a chance for improvement in it [
40]. Keeping this statement in mind, Aquila Optimization embedded with a sinusoidal map is proposed to solve the DR model of a GCRMG system.
Aquila Optimization (AO) belongs to the family of NI algorithms, developed by Abualigah et al. in 2021 [
41]. Since its beginnings, it was implemented to reduce harmonic from the H Bridge inverter [
42], for wind potential estimation [
43], and for the solution of industrial engineering optimization problems [
44]. To the author’s best knowledge, it is not implemented to solve energy management problems with the DR program to date. Moreover, AO is very easy to implement and has few control parameters.