Using particle swarm optimization scheme to settlement prediction

Author(s):  
Jia Guo ◽  
Weili Zhang
2020 ◽  
Vol 10 (6) ◽  
pp. 1904 ◽  
Author(s):  
Danial Jahed Armaghani ◽  
Panagiotis G. Asteris ◽  
Seyed Alireza Fatemi ◽  
Mahdi Hasanipanah ◽  
Reza Tarinejad ◽  
...  

In civil engineering applications, piles (deep foundations) are pushed into the ground in order to perform as steady support of structures. As these type of foundations are able to carry a huge amount of load, they should be carefully designed in terms of their settlement. Therefore, the control and estimation of settlement is a significant issue in pilling design and construction. The objective of the present study is to introduce a modeling process of a hybrid intelligence system namely neural network optimized by particle swarm optimization (neuro-swarm) for estimation of pile settlement. To do that, properties results of several piles socketed into rock mass together with their settlements were considered as established databased to propose neuro-swarm model. Then, several sensitivity analyses were carried out to determine the most influential particle swarm optimization parameters for pile settlement prediction. Eventually, five neuro-swarm models were constructed to understand the behavior of this hybrid model on them in pile settlement prediction. As a result, according to results of five performance indices, dataset number 4 showed the highest prediction capacity among all five datasets. The coefficient of determination (R2) and system error values of (0.851 and 0.079) and (0.892 and 0.099) were obtained respectively for train and test stages of the best neuro-swarm model which reveal the capability level of this hybrid model in predicting pile settlement. The modeling process introduced in this study can be useful for the researchers who are interested to work on the same hybrid technique.


2020 ◽  
Vol 2 (1) ◽  
pp. 50-58
Author(s):  
Dr. Subarna Shakya

A nondeterministic polynomial (NP) with complete Multicast routing problem is defined using a bi-velocity particle swarm optimization (BVDPSO) is proposed in this paper. The shift of particle swarm optimization to the discrete or binary domain, stepping away from the continuous domain is the major impact of the work. Initially a bi-velocity strategy is built such that it characterizes each dimension in terms of 0 and 1. The basic function of this strategy is to describe the MRP’s binary characteristics such that 0 stands for the node not being selected while 1 stands for selection. Based on the location and velocity of the original PSO in the continuous domain, the BVDPSO is updated. This will preserve the global search ability and fast convergence speed of the original PSO. 58 instances of large, medium and small scales are used for experimentation in the OR-Library. Based on the results, it is identified that it is possible to get near-optimal or optimal solutions for BVDPSO as it requires generation of limited multicast trees. This approach is found to be optimal over its peers and outperforms recent heuristic algorithms and many advanced techniques used for the MRP problem. They also outperform several PSO, ant colony optimization and genetic algorithms.


2020 ◽  
Vol 39 (4) ◽  
pp. 5699-5711
Author(s):  
Shirong Long ◽  
Xuekong Zhao

The smart teaching mode overcomes the shortcomings of traditional teaching online and offline, but there are certain deficiencies in the real-time feature extraction of teachers and students. In view of this, this study uses the particle swarm image recognition and deep learning technology to process the intelligent classroom video teaching image and extracts the classroom task features in real time and sends them to the teacher. In order to overcome the shortcomings of the premature convergence of the standard particle swarm optimization algorithm, an improved strategy for multiple particle swarm optimization algorithms is proposed. In order to improve the premature problem in the search performance algorithm of PSO algorithm, this paper combines the algorithm with the useful attributes of other algorithms to improve the particle diversity in the algorithm, enhance the global search ability of the particle, and achieve effective feature extraction. The research indicates that the method proposed in this paper has certain practical effects and can provide theoretical reference for subsequent related research.


Author(s):  
Fachrudin Hunaini ◽  
Imam Robandi ◽  
Nyoman Sutantra

Fuzzy Logic Control (FLC) is a reliable control system for controlling nonlinear systems, but to obtain optimal fuzzy logic control results, optimal Membership Function parameters are needed. Therefore in this paper Particle Swarm Optimization (PSO) is used as a fast and accurate optimization method to determine Membership Function parameters. The optimal control system simulation is carried out on the automatic steering system of the vehicle model and the results obtained are the vehicle's lateral motion error can be minimized so that the movement of the vehicle can always be maintained on the expected trajectory


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