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  • 0801 Artificial Intelligence and Image Processing
  • 0102 Applied Mathematics
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3Khandelwal, Manoj 2Bagirov, Adil 2Ting, Kaiming 2Ugon, Julien 1Albrecht, David 1Armaghani, Danial 1Asadi, Soodabeh 1Canning, John 1Cornforth, David 1Epaarachchi, Jayantha 1Fatemi, Seyed 1Ghoroqi, Mahyar 1Goyal, Madhu 1Jelinek, Herbert 1Jin, Huidong 1Kahandawa, Gayan 1Karasozen, Bulent 1Kaur, Preetinder 1Kelarev, Andrei 1Kumar, Lalit
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40802 Computation Theory and Mathematics 20103 Numerical and Computational Mathematics 20913 Mechanical Engineering 2Blast vibration 2Data mining 10806 Information Systems 10906 Electrical and Electronic Engineering 11702 Cognitive Science 1ANN 1Adaptive evolutionary filter 1Artificial neural network 1Australian football 1Back-propagation 1Classification 1Coefficient of determination 1Cohesion 1Composite structures 1Conventional vibration predictor equations
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3Khandelwal, Manoj 2Bagirov, Adil 2Ting, Kaiming 2Ugon, Julien 1Albrecht, David 1Armaghani, Danial 1Asadi, Soodabeh 1Canning, John 1Cornforth, David 1Epaarachchi, Jayantha 1Fatemi, Seyed 1Ghoroqi, Mahyar 1Goyal, Madhu 1Jelinek, Herbert 1Jin, Huidong 1Kahandawa, Gayan 1Karasozen, Bulent 1Kaur, Preetinder 1Kelarev, Andrei 1Kumar, Lalit
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40802 Computation Theory and Mathematics 20103 Numerical and Computational Mathematics 20913 Mechanical Engineering 2Blast vibration 2Data mining 10806 Information Systems 10906 Electrical and Electronic Engineering 11702 Cognitive Science 1ANN 1Adaptive evolutionary filter 1Artificial neural network 1Australian football 1Back-propagation 1Classification 1Coefficient of determination 1Cohesion 1Composite structures 1Conventional vibration predictor equations
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  • Date

Classification through incremental max-min separability

- Bagirov, Adil, Ugon, Julien, Webb, Dean, Karasozen, Bulent

  • Authors: Bagirov, Adil , Ugon, Julien , Webb, Dean , Karasozen, Bulent
  • Date: 2011
  • Type: Text , Journal article
  • Relation: Pattern Analysis and Applications Vol. 14, no. 2 (2011), p. 165-174
  • Relation: http://purl.org/au-research/grants/arc/DP0666061
  • Full Text: false
  • Reviewed:
  • Description: Piecewise linear functions can be used to approximate non-linear decision boundaries between pattern classes. Piecewise linear boundaries are known to provide efficient real-time classifiers. However, they require a long training time. Finding piecewise linear boundaries between sets is a difficult optimization problem. Most approaches use heuristics to avoid solving this problem, which may lead to suboptimal piecewise linear boundaries. In this paper, we propose an algorithm for globally training hyperplanes using an incremental approach. Such an approach allows one to find a near global minimizer of the classification error function and to compute as few hyperplanes as needed for separating sets. We apply this algorithm for solving supervised data classification problems and report the results of numerical experiments on real-world data sets. These results demonstrate that the new algorithm requires a reasonable training time and its test set accuracy is consistently good on most data sets compared with mainstream classifiers. © 2010 Springer-Verlag London Limited.

A difference of convex optimization algorithm for piecewise linear regression

- Bagirov, Adil, Taheri, Sona, Asadi, Soodabeh

  • Authors: Bagirov, Adil , Taheri, Sona , Asadi, Soodabeh
  • Date: 2019
  • Type: Text , Journal article
  • Relation: Journal of Industrial and Management Optimization Vol. 15, no. 2 (2019), p. 909-932
  • Full Text: false
  • Reviewed:
  • Description: The problem of finding a continuous piecewise linear function approximating a regression function is considered. This problem is formulated as a nonconvex nonsmooth optimization problem where the objective function is represented as a difference of convex (DC) functions. Subdifferentials of DC components are computed and an algorithm is designed based on these subdifferentials to find piecewise linear functions. The algorithm is tested using some synthetic and real world data sets and compared with other regression algorithms.

Using meta-regression data mining to improve predictions of performance based on heart rate dynamics for Australian football

- Jelinek, Herbert, Kelarev, Andrei, Robinson, Dean, Stranieri, Andrew, Cornforth, David

  • Authors: Jelinek, Herbert , Kelarev, Andrei , Robinson, Dean , Stranieri, Andrew , Cornforth, David
  • Date: 2014
  • Type: Text , Journal article
  • Relation: Applied Soft Computing Vol. 14, no. PART A (2014), p. 81-87
  • Full Text: false
  • Reviewed:
  • Description: This work investigates the effectiveness of using computer-based machine learning regression algorithms and meta-regression methods to predict performance data for Australian football players based on parameters collected during daily physiological tests. Three experiments are described. The first uses all available data with a variety of regression techniques. The second uses a subset of features selected from the available data using the Random Forest method. The third used meta-regression with the selected feature subset. Our experiments demonstrate that feature selection and meta-regression methods improve the accuracy of predictions for match performance of Australian football players based on daily data of medical tests, compared to regression methods alone. Meta-regression methods and feature selection were able to obtain performance prediction outcomes with significant correlation coefficients. The best results were obtained by the additive regression based on isotonic regression for a set of most influential features selected by Random Forest. This model was able to predict athlete performance data with a correlation coefficient of 0.86 (p < 0.05). © 2013 Published by Elsevier B.V. All rights reserved.
  • Description: C1
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Extraction and processing of real time strain of embedded FBG sensors using a fixed filter FBG circuit and an artificial neural network

- Kahandawa, Gayan, Epaarachchi, Jayantha, Wang, Hao, Canning, John, Lau, Alan


  • Authors: Kahandawa, Gayan , Epaarachchi, Jayantha , Wang, Hao , Canning, John , Lau, Alan
  • Date: 2013
  • Type: Text , Journal article
  • Relation: Measurement: Journal of the International Measurement Confederation Vol. 46, no. 10 (2013), p. 4045-4051
  • Full Text:
  • Reviewed:
  • Description: Fibre Bragg Grating (FBG) sensors have been used in the development of structural health monitoring (SHM) and damage detection systems for advanced composite structures over several decades. Unfortunately, to date only a handful of appropriate configurations and algorithm sare available for using in SHM systems have been developed. This paper reveals a novel configuration of FBG sensors to acquire strain reading and an integrated statistical approach to analyse data in real time. The proposed configuration has proven its capability to overcome practical constraints and the engineering challenges associated with FBG-based SHM systems. A fixed filter decoding system and an integrated artificial neural network algorithm for extracting strain from embedded FBG sensor were proposed and experimentally proved. Furthermore, the laboratory level experimental data was used to verify the accuracy of the system and it was found that the error levels were less than 0.3% in predictions. The developed SMH system using this technology has been submitted to US patent office and will be available for use of aerospace applications in due course. © 2013 Elsevier Ltd. All rights reserved.

Extraction and processing of real time strain of embedded FBG sensors using a fixed filter FBG circuit and an artificial neural network

  • Authors: Kahandawa, Gayan , Epaarachchi, Jayantha , Wang, Hao , Canning, John , Lau, Alan
  • Date: 2013
  • Type: Text , Journal article
  • Relation: Measurement: Journal of the International Measurement Confederation Vol. 46, no. 10 (2013), p. 4045-4051
  • Full Text:
  • Reviewed:
  • Description: Fibre Bragg Grating (FBG) sensors have been used in the development of structural health monitoring (SHM) and damage detection systems for advanced composite structures over several decades. Unfortunately, to date only a handful of appropriate configurations and algorithm sare available for using in SHM systems have been developed. This paper reveals a novel configuration of FBG sensors to acquire strain reading and an integrated statistical approach to analyse data in real time. The proposed configuration has proven its capability to overcome practical constraints and the engineering challenges associated with FBG-based SHM systems. A fixed filter decoding system and an integrated artificial neural network algorithm for extracting strain from embedded FBG sensor were proposed and experimentally proved. Furthermore, the laboratory level experimental data was used to verify the accuracy of the system and it was found that the error levels were less than 0.3% in predictions. The developed SMH system using this technology has been submitted to US patent office and will be available for use of aerospace applications in due course. © 2013 Elsevier Ltd. All rights reserved.
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A comparison of bidding strategies for online auctions using fuzzy reasoning and negotiation decision functions

- Kaur, Preetinder, Goyal, Madhu, Lu, Jie


  • Authors: Kaur, Preetinder , Goyal, Madhu , Lu, Jie
  • Date: 2017
  • Type: Text , Journal article
  • Relation: IEEE Transactions on Fuzzy Systems Vol. 25, no. 2 (2017), p. 425-438
  • Full Text:
  • Reviewed:
  • Description: Bidders often feel challenged when looking for the best bidding strategies to excel in the competitive environment of multiple and simultaneous online auctions for same or similar items. Bidders face complicated issues for deciding which auction to participate in, whether to bid early or late, and how much to bid. In this paper, we present the design of bidding strategies, which aim to forecast the bid amounts for buyers at a particular moment in time based on their bidding behavior and their valuation of an auctioned item. The agent develops a comprehensive methodology for final price estimation, which designs bidding strategies to address buyers' different bidding behaviors using two approaches: Mamdani method with regression analysis and negotiation decision functions. The experimental results show that the agents who follow fuzzy reasoning with a regression approach outperform other existing agents in most settings in terms of their success rate and expected utility.

A comparison of bidding strategies for online auctions using fuzzy reasoning and negotiation decision functions

  • Authors: Kaur, Preetinder , Goyal, Madhu , Lu, Jie
  • Date: 2017
  • Type: Text , Journal article
  • Relation: IEEE Transactions on Fuzzy Systems Vol. 25, no. 2 (2017), p. 425-438
  • Full Text:
  • Reviewed:
  • Description: Bidders often feel challenged when looking for the best bidding strategies to excel in the competitive environment of multiple and simultaneous online auctions for same or similar items. Bidders face complicated issues for deciding which auction to participate in, whether to bid early or late, and how much to bid. In this paper, we present the design of bidding strategies, which aim to forecast the bid amounts for buyers at a particular moment in time based on their bidding behavior and their valuation of an auctioned item. The agent develops a comprehensive methodology for final price estimation, which designs bidding strategies to address buyers' different bidding behaviors using two approaches: Mamdani method with regression analysis and negotiation decision functions. The experimental results show that the agents who follow fuzzy reasoning with a regression approach outperform other existing agents in most settings in terms of their success rate and expected utility.

Implementing an ANN model optimized by genetic algorithm for estimating cohesion of limestone samples

- Khandelwal, Manoj, Marto, Aminaton, Fatemi, Seyed, Ghoroqi, Mahyar, Armaghani, Danial, Singh, Trilok, Tabrizi, Omid

  • Authors: Khandelwal, Manoj , Marto, Aminaton , Fatemi, Seyed , Ghoroqi, Mahyar , Armaghani, Danial , Singh, Trilok , Tabrizi, Omid
  • Date: 2018
  • Type: Text , Journal article
  • Relation: Engineering with Computers Vol. 34, no. 2 (2018), p. 307-317
  • Full Text: false
  • Reviewed:
  • Description: Shear strength parameters such as cohesion are the most significant rock parameters which can be utilized for initial design of some geotechnical engineering applications. In this study, evaluation and prediction of rock material cohesion is presented using different approaches i.e., simple and multiple regression, artificial neural network (ANN) and genetic algorithm (GA)-ANN. For this purpose, a database including three model inputs i.e., p-wave velocity, uniaxial compressive strength and Brazilian tensile strength and one output which is cohesion of limestone samples was prepared. A meaningful relationship was found for all of the model inputs with suitable performance capacity for prediction of rock cohesion. Additionally, a high level of accuracy (coefficient of determination, R2 of 0.925) was observed developing multiple regression equation. To obtain higher performance capacity, a series of ANN and GA-ANN models were built. As a result, hybrid GA-ANN network provides higher performance for prediction of rock cohesion compared to ANN technique. GA-ANN model results (R2 = 0.976 and 0.967 for train and test) were better compared to ANN model results (R2 = 0.949 and 0.948 for train and test). Therefore, this technique is introduced as a new one in estimating cohesion of limestone samples. © 2017, Springer-Verlag London Ltd., part of Springer Nature.

Application of soft computing to predict blast-induced ground vibration

- Khandelwal, Manoj, Kumar, Lalit, Yellishetty, Mohan

  • Authors: Khandelwal, Manoj , Kumar, Lalit , Yellishetty, Mohan
  • Date: 2011
  • Type: Text , Journal article
  • Relation: Engineering with Computers Vol. 27, no. 2 (2011), p. 117-125
  • Full Text: false
  • Reviewed:
  • Description: In this study, an attempt has been made to evaluate and predict the blast-induced ground vibration by incorporating explosive charge per delay and distance from the blast face to the monitoring point using artificial neural network (ANN) technique. A three-layer feed-forward back-propagation neural network with 2-5-1 architecture was trained and tested using 130 experimental and monitored blast records from the surface coal mines of Singareni Collieries Company Limited, Kothagudem, Andhra Pradesh, India. Twenty new blast data sets were used for the validation and comparison of the peak particle velocity (PPV) by ANN and conventional vibration predictors. Results were compared based on coefficient of determination and mean absolute error between monitored and predicted values of PPV. © 2009 Springer-Verlag London Limited.

Blast-induced ground vibration prediction using support vector machine

- Khandelwal, Manoj

  • Authors: Khandelwal, Manoj
  • Date: 2011
  • Type: Text , Journal article
  • Relation: Engineering with Computers Vol. 27, no. 3 (2011), p. 193-200
  • Full Text: false
  • Reviewed:
  • Description: Ground vibrations induced by blasting are one of the fundamental problems in the mining industry and may cause severe damage to structures and plants nearby. Therefore, a vibration control study plays an important role in the minimization of environmental effects of blasting in mines. In this paper, an attempt has been made to predict the peak particle velocity using support vector machine (SVM) by taking into consideration of maximum charge per delay and distance between blast face to monitoring point. To investigate the suitability of this approach, the predictions by SVM have been compared with conventional vibration predictor equations. Coefficient of determination (CoD) and mean absolute error were taken as a performance measure. © 2010 Springer-Verlag London Limited.

Spectrum of Variable-Random trees

- Liu, Fei, Ting, Kaiming, Yu, Yang, Zhou, Zhi-Hua

  • Authors: Liu, Fei , Ting, Kaiming , Yu, Yang , Zhou, Zhi-Hua
  • Date: 2008
  • Type: Text , Journal article
  • Relation: The Journal of Artificial Intelligence Research Vol. 32, no. (2008), p. 355-384
  • Full Text: false
  • Reviewed:
  • Description: In this paper, we show that a continuous spectrum of randomisation exists, in which most existing tree randomisations are only operating around the two ends of the spectrum. That leaves a huge part of the spectrum largely unexplored. We propose a base learner VR-Tree which generates trees with variable-randomness. VR-Trees are able to span from the conventional deterministic trees to the complete-random trees using a probabilistic parameter. Using VR-Trees as the base models, we explore the entire spectrum of randomised ensembles, together with Bagging and Random Subspace. We discover that the two halves of the spectrum have their distinct characteristics; and the understanding of which allows us to propose a new approach in building better decision tree ensembles. We name this approach Coalescence, which coalesces a number of points in the random-half of the spectrum. Coalescence acts as a committee of "experts" to cater for unforeseeable conditions presented in training data. Coalescence is found to perform better than any single operating point in the spectrum, without the need to tune to a specific level of randomness. In our empirical study, Coalescence ranks top among the benchmarking ensemble methods including Random Forests, Random Subspace and C5 Boosting; and only Coalescence is significantly better than Bagging and Max-Diverse Ensemble among all the methods in the comparison. Although Coalescence is not significantly better than Random Forests, we have identified conditions under which one will perform better than the other.

ZERO++ : Harnessing the power of zero appearances to detect anomalies in large-scale data sets

- Pang, Guansong, Ting, Kaiming, Albrecht, David, Jin, Huidong

  • Authors: Pang, Guansong , Ting, Kaiming , Albrecht, David , Jin, Huidong
  • Date: 2016
  • Type: Text , Journal article
  • Relation: Journal of Artificial Intelligence Research Vol. 57, no. (2016), p. 593-620
  • Full Text: false
  • Reviewed:
  • Description: This paper introduces a new unsupervised anomaly detector called ZERO++ which employs the number of zero appearances in subspaces to detect anomalies in categorical data. It is unique in that it works in regions of subspaces that are not occupied by data; whereas existing methods work in regions occupied by data. ZERO++ examines only a small number of low dimensional subspaces to successfully identify anomalies. Unlike existing frequency-based algorithms, ZERO++ does not involve subspace pattern searching. We show that ZERO++ is better than or comparable with the state-of-the-art anomaly detection methods over a wide range of real-world categorical and numeric data sets; and it is efficient with linear time complexity and constant space complexity which make it a suitable candidate for large-scale data sets.

Optimality conditions and optimization methods for quartic polynomial optimization

- Wu, Zhiyou, Tian, Jing, Quan, Jing, Ugon, Julien

  • Authors: Wu, Zhiyou , Tian, Jing , Quan, Jing , Ugon, Julien
  • Date: 2014
  • Type: Text , Journal article
  • Relation: Applied Mathematics and Computation Vol. 232, no. (2014), p. 968-982
  • Full Text: false
  • Reviewed:
  • Description: In this paper multivariate quartic polynomial optimization program (QPOP) is considered. Quartic optimization problems arise in various practical applications and are proved to be NP hard. We discuss necessary global optimality conditions for quartic problem (QPOP). And then we present a new (strongly or ε-strongly) local optimization method according to necessary global optimality conditions, which may escape and improve some KKT points. Finally we design a global optimization method for problem (QPOP) by combining the new (strongly or ε-strongly) local optimization method and an auxiliary function. Numerical examples show that our algorithms are efficient and stable.

An improved simplex-based adaptive evolutionary digital filter and its application for fault detection of rolling element bearings

- Xiao, Huifang, Shao, Yimin, Zhou, Xiaojun, Wilcox, Steven

  • Authors: Xiao, Huifang , Shao, Yimin , Zhou, Xiaojun , Wilcox, Steven
  • Date: 2014
  • Type: Text , Journal article
  • Relation: Measurement: Journal of the International Measurement Confederation Vol. 55, no. (2014), p. 25-32
  • Full Text: false
  • Reviewed:
  • Description: The de-noising performance and convergence behavior of the adaptive evolutionary digital filter (EDF) are restricted by the factors of constant evolutionary coefficients and taking the reciprocal of average energy of residual signal as the fitness function. In this paper, an improved adaptive evolutionary digital filter based on the simplex method (EDF-SM) is proposed to overcome the shortcomings of the original EDF. A new evolutionary rule was constructed by introducing the simplex-based mutating method and by then combining this with the original cloning and mating methods. The reciprocal of sample entropy was taken as the fitness function and variable evolutionary coefficients were employed. Numerical examples show that the proposed EDF-SM exhibits a higher convergence rate and a better de-noising behavior than the other EDFs. The effectiveness of the proposed method in discovering fault characteristics and detecting faults of rolling element bearings is supported using an experimental test. © 2014 Elsevier Ltd. All rights reserved.

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