Online citations, reference lists, and bibliographies.

Computational Intelligence: An Introduction

A. Engelbrecht
Published 2002 · Computer Science

Cite This
Download PDF
Analyze on Scholarcy
Share
Computational Intelligence: An Introduction, Second Edition offers an in-depth exploration into the adaptive mechanisms that enable intelligent behaviour in complex and changing environments. The main focus of this text is centred on the computational modelling of biological and natural intelligent systems, encompassing swarm intelligence, fuzzy systems, artificial neutral networks, artificial immune systems and evolutionary computation. Engelbrecht provides readers with a wide knowledge of Computational Intelligence (CI) paradigms and algorithms; inviting readers to implement and problem solve real-world, complex problems within the CI development framework. This implementation framework will enable readers to tackle new problems without any difficulty through a single Java class as part of the CI library. Key features of this second edition include: A tutorial, hands-on based presentation of the material. State-of-the-art coverage of the most recent developments in computational intelligence with more elaborate discussions on intelligence and artificial intelligence (AI). New discussion of Darwinian evolution versus Lamarckian evolution, also including swarm robotics, hybrid systems and artificial immune systems. A section on how to perform empirical studies; topics including statistical analysis of stochastic algorithms, and an open source library of CI algorithms. Tables, illustrations, graphs, examples, assignments, Java code implementing the algorithms, and a complete CI implementation and experimental framework. Computational Intelligence: An Introduction, Second Edition is essential reading for third and fourth year undergraduate and postgraduate students studying CI. The first edition has been prescribed by a number of overseas universities and is thus a valuable teaching tool. In addition, it will also be a useful resource for researchers in Computational Intelligence and Artificial Intelligence, as well as engineers, statisticians, operational researchers, and bioinformaticians with an interest in applying AI or CI to solve problems in their domains. Check out http://www.ci.cs.up.ac.za for examples, assignments and Java code implementing the algorithms.
This paper references



This paper is referenced by
10.1007/978-3-642-01129-0_50
Fractal Evolver: Interactive Evolutionary Design of Fractals with Grid Computing
Ryan D. Moniz (2009)
10.1007/978-3-642-13355-8_11
Incorporating a Discrete Renewal Random Sum in Computational Intelligence and Cindynics
Panagiotis T. Artikis (2010)
Learning the Model Structure of Dynamic Bayesian Networks for Automated Speech Recognition
Gusniar Harahap (2010)
10.1109/ICFN.2010.104
An Intelligent Learning Approach for Information Hiding in 3D Multimedia
Rakhi C. Motwani (2010)
Chaotic particle swarm optimization
Hesham Ahmed Hefny (2010)
10.1007/978-3-642-15844-5_12
Differential Mutation Based on Population Covariance Matrix
Karol R. Opara (2010)
10.2991/IJCIS.2010.3.5.11
Extremal Optimization Combined with LM Gradient Search for MLP Network Learning
Peng Chen (2010)
10.3934/NACO.2011.1.435
Orbital transfers: optimization methods and recent results
Mauro Pontani (2011)
10.1002/9781119214403.ch1
Introduction to Computational Intelligence
Albert B. Einstein (2013)
10.1145/3131704.3131712
Learning from Internet: Handling Uncertainty in Robotic Environment Modeling
Yiying Li (2017)
10.1109/LA-CCI.2018.8625236
Performance Evaluation of Optimization Algorithms based on GPU using CUDA Architecture
Yunkio Kawano (2018)
10.1109/FUZZ-IEEE.2014.6891588
A systems approach for scheduling aircraft landings in JFK airport
Sina Khanmohammadi (2014)
10.1109/SECON.2017.7925296
Development of robot swarm algorithms on an extensible framework
Sambit Bhattacharya (2017)
10.17877/DE290R-8778
Dezentrales grid scheduling mittels computational intelligence
Joachim Lepping (2011)
Direct Mathematical Method for Real-time Ischemic Detection from Electrocardiograms Using the Discrete Hermite Transform
Maiko Arichi (2011)
10.1109/SDE.2013.6601456
A brief survey of differential evolution on Graphic Processing Units
Pavel Krömer (2013)
Intelligent data mining using artificial neural networks and genetic algorithms : techniques and applications
Jianhua Yang (2010)
10.25777/A08Z-9K79
Incorporating memory and learning mechanisms into Meta-RaPS
Arif Arin (2012)
10.1016/J.RIMNI.2013.06.006
Desarrollo de un algoritmo de optimización global en colonias de hormigas con selección de región factible para espacios continuos
Jorge Adán Fernández-Vargas (2014)
An Artificial Life Simulation Library Based on Genetic Algorithm, 3-Character Genetic Code and Biological Hierarchy
Maurice H. T. Ling (2012)
10.1007/978-3-642-41278-3_45
Metamodel Assisted Mixed-Integer Evolution Strategies Based on Kendall Rank Correlation Coefficient
Lili Zhuang (2013)
10.1145/2576768.2598269
MapReduce-based optimization of overlay networks using particle swarm optimization
Simone A. Ludwig (2014)
10.1515/jaiscr-2015-0008
Repulsive Self-Adaptive Acceleration Particle Swarm Optimization Approach
Simone A. Ludwig (2014)
10.1504/IJNEST.2014.063008
Testing population initialisation schemes for differential evolution applied to a nuclear reactor core design
Wagner F. Sacco (2014)
Computational Intelligence in Electrical Power Systems: A Survey of Emerging Approaches
Sunny Orike (2015)
10.7763/IJIEE.2012.V2.109
A Novel Scheduling Mechanism Based on Artificial Immune System for Communication between Cluster Head and Cluster Members in WSNs
Arash Nikdel (2012)
10.1109/CICN.2015.243
Exploited Differential Evolution Algorithm
Aakanksha Bhatnagar (2015)
10.1109/CCAA.2016.7813736
Differential evolution algorithm using stochastic mutation
Nikky Choudhary (2016)
10.1007/978-3-319-20466-6_36
Multi-objective Differential Evolution Algorithm for Multi-label Feature Selection in Classification
Y. Zhang (2015)
10.1051/SMDO/2017001
Tuning PID attitude stabilization of a quadrotor using particle swarm optimization (experimental)
Mohammed Abdallah Khodja (2017)
10.1007/978-981-10-3322-3_1
Adaptive Scale Factor Based Differential Evolution Algorithm
Nikky Choudhary (2016)
SUGGEST CLUSTERING ALGORITHM FOR FEATURES ANALYSIS OF X-RAY IMAGES
Dr. Samaher Hussein Ali (2013)
See more
Semantic Scholar Logo Some data provided by SemanticScholar