2022
DOI: 10.1109/access.2022.3141432
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An Effective Artificial Intelligence Approach for Slope Stability Evaluation

Abstract: In this study, an effective intelligent system based on artificial neural networks (ANN) and a new version of the sine cosine algorithm (SCA) is developed to evaluate and predict the FOS of homogenous slopes under static and dynamic loading. In the first step, an effective hybrid optimization algorithm based on the adaptive sine cosine algorithm (ASCA) and pattern search (PS), namely ASCPS, is proposed and verified using a set of benchmark test functions. Then, the new algorithm, along with the Morgenstern and… Show more

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Cited by 29 publications
(8 citation statements)
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References 36 publications
(56 reference statements)
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“…There are other algorithms that are a combination or modification of algorithms in these four categories. Some of them are: modified particle swarm optimization [36], [37], modified harmony search algorithm [38], modified gravitational search algorithm [39], [40], modified ant colony optimization [41], modified sine cosine algorithm [42], [43], modified wild horse optimization [44], modified slime mould algorithm [45], hybrid genetic algorithm and particle swarm optimization [46], hybrid firefly algorithm [47], hybrid sperm swarm optimization and gravitational search algorithm [48], hybrid tunicate swarm algorithm and pattern search [49], hybrid arithmetic optimization algorithm and sine cosine algorithm [50].…”
Section: Related Workmentioning
confidence: 99%
“…There are other algorithms that are a combination or modification of algorithms in these four categories. Some of them are: modified particle swarm optimization [36], [37], modified harmony search algorithm [38], modified gravitational search algorithm [39], [40], modified ant colony optimization [41], modified sine cosine algorithm [42], [43], modified wild horse optimization [44], modified slime mould algorithm [45], hybrid genetic algorithm and particle swarm optimization [46], hybrid firefly algorithm [47], hybrid sperm swarm optimization and gravitational search algorithm [48], hybrid tunicate swarm algorithm and pattern search [49], hybrid arithmetic optimization algorithm and sine cosine algorithm [50].…”
Section: Related Workmentioning
confidence: 99%
“…roughout the training and testing phases, the ANN is trained on what things to search for and what its output ought to look like, utilising binary yes/no query types [24]. e activation function is imperious for an ANN to learn and build the logic of some genuinely complex problem.…”
Section: Artificial Neural Network Modelmentioning
confidence: 99%
“…Two-way shear: The tendency of the column to punch through the footing slab is called punching shear. According to Equation (10), the maximum shearing force in the upward direction (V u ) should be less than the nominal punching shear strength to avoid such a failure.…”
Section: Eccentricitymentioning
confidence: 99%
“…This enables the evaluation of non-linear correlations between any of the soil and foundation characteristics, as well as provides faster and more accurate results than earlier techniques. ANNs have recently been used to solve a variety of geotechnical engineering applications such as bearing capacity estimation [6,7], rock burst hazard prediction in underground projects [8], slope stability evaluation [9][10][11], concrete compressive strength prediction [12], and estimation of rock modulus [13]. This suggests that ANNs can be utilized for forecasting as well as prediction of events by simulating exceedingly complex functions [14].…”
Section: Introductionmentioning
confidence: 99%