The RFD algorithm has some disadvantages which avoid the algorithm for great execution, termed as problem of path generation. On account of an enormous number of coefficients, tuning of the algorithm to a specific case which is unintuitive in high case and regardless of its rate of convergence is little for increasingly confused situations.
1.5.1.4.11 Firefly Algorithm
FA is the swarm-based metaheuristic approach which is introduced by Xin. The behavior such as flashing lights of the fireflies is inspired and utilized in the algorithm. The algorithm utilizes the concept that fireflies are always both sex and implies that any firefly can be engrossed by some firefly and the ability of the desirability of the firefly is directly relational to the ability of its brightness which depends upon the goal work. A firefly will be pulled in to the firefly with more brightness.
The working function FA has the following steps.
1 Objective function is initialized by absorbing the light intensity.
2 Initial population of the firefly is generated.
3 For every firefly, the light intensity is determined.
4 Attractiveness of the firefly is calculated.
5 The firefly which has brightness level of minimum is moved toward the firefly which has brightness level of maximum.
6 Light intensity of the firefly is updated.
7 Fireflies are ranked based on the intensities and best solution is found.
The advantages of the FA are that it has an ability to die with nonlinear more effectively, optimization of multimodal problem can be solved naturally, there is no need of velocity as it is needed in PSO, solution to the global optimization problem can be found as soon as possible, it is flexible to integrate with other technique of optimization, and initial solution is not required. The disadvantage of FA is it consumes more time to reach the optimal solution. FA is used in the field of semantic web composition, classification and clustering problems, neural network, fault detection, digital image compression, feature selection, digital image processing, scheduling problems, and TSP.
1.5.1.4.12 Group Search Optimizer Algorithm
Group search optimizer (GSO) is an optimization algorithm based on approach of heuristic with respect to populace. It implements the model of Producer Scrounger (PS) for modeling the technique of searching through optimization which is inspired by hunting behavior of animal. In GSO, a class may consist of three parameters, namely, producers, rangers, and scroungers. The behavior of producer and scrounger consists of scanning and replication of a particular area, and ranger will perform the task of random walk. The producer is selected by the individual situated in an area that has preeminent ability value in each iteration and scans to search for the resources in the environment. The scroungers are selected in the way who will continue scanning for chances to intersect with the resource setup by the manufacturer. The remaining member in the cluster is referred as rangers which has the ability to scatter from their present locations [10].
The algorithm of GSO is easy, simple, and clear executes, which gives a structure that is open to use the study in actions of animal to handle the hard situation. This algorithm illustrates the robustness and not sensitive for the factors excluding the ranger’s percentage. In any case, the complex of computational is expanded significantly on the grounds that it embraces an idea of interest edge that a polar can have Cartesian coordinate that will change according to required needs. PSO is a classification of SI is best algorithm for candidate for problems of NP-hard. It is computational basic and simple to execute structured in Cartesian facilitate. In addition to the benefits of PSO and GSO, to improve GSO for ideal setting of distributed generator (DG) is a stimulating work.
1.5.1.4.13 Bat Algorithm
Bat algorithm was introduced by Xin-She Yang by inspiring the behavior of locating the path by echo which is referred as echolocation of the micro-bats that vary in rating of pulse for the parameter of loudness and emission for the optimization. Echolocation mechanism is as a sort of sonar that bats for the most part micro-bats produce a noisy and short sound of pulse. At the point when they hit an item, after a small amount of time, the reverberation will return back to their ears. The bat gets and identifies the area of the target right now. This location identifying mechanism through echo makes bats ready to recognize the contrast between a problem and a prey and permits them to chase even in full darkness. So as to mimic the hunting behavior of the bats, a technique of the bat algorithm is implemented with the following assumptions:
1 Bats utilize the technique of echolocation to detect the distance and they can also identify the difference between the target and the walls.
2 Bat can fly accidentally along with the velocity and position for a static frequency that may vary in wavelength and loudness for searching the target. They can modify the wavelength automatically with respect to their pulse depending on the target.
3 Bat’s loudness can vary in more number of ways ranging from large positive to minimum value.
Based on three assumptions, the algorithm produces a group of solutions randomly for the problem and afterward looks through the ideal solution by cycle and make stronger the nearby analysis during the time spent of searching. By providing the optimal solution randomly, bat algorithm discovers the global optimal solution to their problem. Some of the applications of bat algorithm are image processing, clustering, classification, data mining, continuous optimization, problem inverse and estimation of parameter, combination scheduling and optimization, and fuzzy logic.
1.5.1.4.14 Binary Bat Algorithm
Binary bat algorithm (BBA) is an approach utilized for solving discrete problems which was introduced by Nakamura. BBA is implemented in the problem of classification and selection of feature. It is a binary version of bat algorithm with the modification of velocity and position. In other version like continuous of bat algorithm, bat travels through the search place of target with the help of velocity and position parameters. In position, it shifts between 0’s and 1’s which act as the binary space to reach the target.
1.5.1.4.15 Cuttlefish Algorithm
The cuttlefish algorithm (CFA) is inspired by the color changing behavior of cuttlefish to identify the optimal solution of the problem. The set of patterns and hues found in cuttlefish are created by reflection of light from various types cells layer like chromatophores, iridophores, and leucophores which are stacked together, and it is a combination of specific cells on the double that permits cuttlefish to have such a huge selection of pattern and hues.
Cuttlefish is a sort of cephalopods which is distinguished for its capacities to change its shading either to apparently vanish into its condition or to deliver magnificent presentations. The pattern and hues found in cephalopods are created by various types and cell layers are stacked together including chromatophores, iridophores, and leucophores.
Cuttlefish algorithm thinks about two major measures, namely, reflection and perceptibility. Reflection process is referred to reproduce the light reflection system utilized by these three layers where the perceptibility is referred to putting on the perceptibility of coordinating example utilized by the cuttlefish. These two procedures are utilized for technique like searching to locate the optimal solution of the problem.
1.5.1.4.16 Grey Wolf Optimizer
Grey Wolf Optimizer (GWO) was introduced by Mirjalili, which is one of the mimicking of the management quality with leadership and hare coursing mechanism of grey wolves. Alpha, Beta, Delta,