Fuzzy dynamic parameter adaptation in the bird swarm algorithm for neural network optimization

被引:11
作者
Melin, Patricia [1 ]
Miramontes, Ivette [1 ]
Carvajal, Oscar [1 ]
Prado-Arechiga, German [2 ]
机构
[1] Tijuana Inst Technol, Tijuana, Mexico
[2] Cardiodiagnost Excel Med Ctr, Tijuana, Mexico
关键词
Blood pressure; Hypertension; Optimization; Fuzzy system; Bird swarm algorithm (BSA); DIFFERENTIAL EVOLUTION; SYSTEMS; DESIGN; CLASSIFICATION; SEARCH;
D O I
10.1007/s00500-021-06729-7
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Fuzzy dynamic parameter adaptation has proven to be of great help when it is implemented in bio-inspired algorithms for optimization in different application areas, such as control, mathematical functions, classification, among others. One of the main contributions of this work is the proposed improvement of the Bird Swarm algorithm using a Fuzzy System approach, and we called this improvement the Fuzzy Bird Swarm Algorithm. Furthermore, we use a set of complex Benchmark Functions of the Congress on Evolutionary Computation Competition 2017 to compare the results between the original algorithm and the proposed improvement of the algorithm. The fuzzy system is utilized for the dynamic parameter adaptation of the C1 and C2 parameters of the Bird Swarm Algorithm. As a result, the Fuzzy Bird Swarm Algorithm has enhanced exploration and exploitation abilities that help in achieving better results than the Bird Swarm Algorithm. We additionally test the algorithm's performance in a real problem in the medical area, using the optimization of a neural network to obtain the risk of developing hypertension. This neural network uses information, such as age, gender, body mass index, systolic pressure, diastolic pressure, if the patient smokes and if the patient has parents with hypertension. Hypertension is one of the leading causes of heart problems, which in turn are also one of the top causes of death. Moreover, these days it causes more complications and deaths in people infected with COVID-19, the virus of the ongoing pandemic. Based on the results obtained through the 30 experiments carried out in three different study cases, and the results obtained from the statistical tests, it can be concluded that the proposed method provides better performance when compared with the original method.
引用
收藏
页码:9497 / 9514
页数:18
相关论文
共 42 条
[1]   A novel two-stage evolutionary optimization method for multiyear expansion planning of distribution systems in presence of distributed generation [J].
Ahmadigorji, Masoud ;
Amjady, Nima ;
Dehghan, Shahab .
APPLIED SOFT COMPUTING, 2017, 52 :1098-1115
[2]   RESULTS AND CHALLENGES OF ARTIFICIAL NEURAL NETWORKS USED FOR DECISION-MAKING AND CONTROL IN MEDICAL APPLICATIONS [J].
Albu, Adriana ;
Precup, Radu-Emil ;
Teban, Teodor-Adrian .
FACTA UNIVERSITATIS-SERIES MECHANICAL ENGINEERING, 2019, 17 (03) :285-308
[3]  
Aoun O, 2018, OPER RES COMPUT SCI, V62, P1, DOI 10.1007/978-3-319-58253-5_1
[4]  
Assaghir Z., 2017, INT J SCI DEV RES, V2, P2
[5]   A new hybrid optimization method combining artificial bee colony and limited-memory BFGS algorithms for efficient numerical optimization [J].
Badem, Hasan ;
Basturk, Alper ;
Caliskan, Abdullah ;
Yuksel, Mehmet Emin .
APPLIED SOFT COMPUTING, 2018, 70 :826-844
[6]   A hybrid machine-learning and optimization method to solve bi-level problems [J].
Bagloee, Saeed Asadi ;
Asadi, Mohsen ;
Sarvi, Majid ;
Patriksson, Michael .
EXPERT SYSTEMS WITH APPLICATIONS, 2018, 95 :142-152
[7]  
Bakris GL SM., 2018, Hypertension: a companion to Braunwald's heart disease
[8]  
Bernal E., 2020, SN COMPUT SCI, V1, DOI [10.1007/s42979-020-0062-4, DOI 10.1007/S42979-020-0062-4]
[9]   Optimal Genetic Design of Type-1 and Interval Type-2 Fuzzy Systems for Blood Pressure Level Classification [J].
Carlos Guzman, Juan ;
Miramontes, Ivette ;
Melin, Patricia ;
Prado-Arechiga, German .
AXIOMS, 2019, 8 (01)
[10]   Design of an optimized fuzzy classifier for the diagnosis of blood pressure with a new computational method for expert rule optimization [J].
Guzman J.C. ;
Melin P. ;
Prado-Arechiga G. .
Algorithms, 2017, 10 (03)