Muhammad Waqar Aslam
University of Liverpool
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Featured researches published by Muhammad Waqar Aslam.
IEEE Transactions on Wireless Communications | 2012
Muhammad Waqar Aslam; Zhechen Zhu; Asoke K. Nandi
Automatic Modulation Classification (AMC) is an intermediate step between signal detection and demodulation. It is a very important process for a receiver that has no, or limited, knowledge of received signals. It is important for many areas such as spectrum management, interference identification and for various other civilian and military applications. This paper explores the use of Genetic Programming (GP) in combination with K-nearest neighbor (KNN) for AMC. KNN has been used to evaluate fitness of GP individuals during the training phase. Additionally, in the testing phase, KNN has been used for deducing the classification performance of the best individual produced by GP. Four modulation types are considered here: BPSK, QPSK, QAM16 and QAM64. Cumulants have been used as input features for GP. The classification process has been divided into two-stages for improving the classification accuracy. Simulation results demonstrate that the proposed method provides better classification performance compared to other recent methods.
Expert Systems With Applications | 2013
Muhammad Waqar Aslam; Zhechen Zhu; Asoke K. Nandi
Abstract The ultimate aim of this research is to facilitate the diagnosis of diabetes, a rapidly increasing disease in the world. In this research a genetic programming (GP) based method has been used for diabetes classification. GP has been used to generate new features by making combinations of the existing diabetes features, without prior knowledge of the probability distribution. The proposed method has three stages: features selection is performed at the first stage using t-test, Kolmogorov–Smirnov test, Kullback–Leibler divergence test, F-score selection, and GP. The results of feature selection methods are used to prepare an ordered list of original features where features are arranged in decreasing order of importance. Different subsets of original features are prepared by adding features one by one in each subset using sequential forward selection method according to the ordered list. At the second stage, GP is used to generate new features from each subset of original diabetes features, by making non-linear combinations of the original features. A variation of GP called GP with comparative partner selection (GP-CPS), utilising the strengths and the weaknesses of GP generated features, has been used at the second stage. The performance of GP generated features for classification is tested using the k-nearest neighbor and support vector machine classifiers at the last stage. The results and their comparisons with other methods demonstrate that the proposed method exhibits superior performance over other recent methods.
Signal Processing | 2014
Zhechen Zhu; Muhammad Waqar Aslam; Asoke K. Nandi
With the classification performance and computational complexity in mind, we propose a new optimized distribution sampling test (ODST) classifier for automatic classification of M-QAM signals. In ODST, signal cumulative distributions are sampled at pre-established locations. The actual sampling process is transformed into simple counting task for reduced computational complexity. The optimization of sampling locations is based on theoretical signal models derived under various channel conditions. Genetic Algorithm (GA) is employed to optimize distance metrics using sampled distribution parameters for distribution test between signals. The final decision is made based on distances between tested signal and candidate modulations. By using multiple sampling locations on signal cumulative distributions, the classifiers robustness is enhanced for possible signal statistical variance or signal model mismatching. AWGN channel, phase offset, and frequency offset are considered to evaluate the performance of the proposed algorithm. Experimental results show that the proposed method has advantages in both classification accuracy and computational complexity over most existing classifiers.
military communications conference | 2010
Muhammad Waqar Aslam; Zhechen Zhu; Asoke K. Nandi
Automatic modulation classification is an intrinsically interesting problem with various civil and military applications. A generalized digital modulation classification algorithm has been developed and presented in this paper. The proposed algorithm uses Genetic Programming (GP) with K-Nearest Neighbor (K-NN). The algorithm is used to identify BPSK, QPSK, 16QAM and 64QAM modulations. Higher order cumulants have been used as input features for the algorithm. A two-stage classification approach has been used to improve the classification accuracy. The high performance of the method is demonstrated using computer simulations and in comparisons with existing methods.
international workshop on machine learning for signal processing | 2010
Zhechen Zhu; Muhammad Waqar Aslam; Asoke K. Nandi
Automatic modulation classification (AMC) is used to identify automatically the modulation types of transmitted signals using the received data samples in the presence of noise. It is a very important process for a receiver that has no, or limited, knowledge of signals received. It is an intermediate step between signal detection and demodulation and has various civilian and military applications. In this paper we propose to use Genetic Programming (GP) with KNN classifier for automatic classification of digital modulation types for the first time. The method proposed here has been designed for BPSK, QPSK, 16QAM and 64QAM. The results from simulation experiments show that the proposed method is able to identify the above modulation types at SNRs of 10dB and 20dB. The performance of the proposed method has been compared with existing methods and it is found to provide the best results so far.
international workshop on machine learning for signal processing | 2013
Zhechen Zhu; Asoke K. Nandi; Muhammad Waqar Aslam
In this paper, we explore new Adapted Geometric Semantic (AGS) operators in the case where Genetic programming (GP) is used as a feature generator for signal classification. Also to control the computational complexity, a devolution scheme is introduced to reduce the solution complexity without any significant impact on their fitness. Fishers criterion is employed as fitness function in GP. The proposed method is tested using diabetes and breast cancer datasets. According to the experimental results, GP with AGS operators and devolution mechanism provides better classification performance while requiring less training time as compared to standard GP.
international workshop on machine learning for signal processing | 2013
Zhechen Zhu; Asoke K. Nandi; Muhammad Waqar Aslam
In this paper, we propose distribution based binary discriminative features and a novel feature enhancement process for automatic modulation classification. The new features exploit the signal distribution mismatch between two modulations. Signal distributions on I-Q segments, amplitude and phase, are considered to produce a comprehensive feature set for improved robustness. Logistic regression is used to reduce feature dimension and enhance classification robustness. To accomplish multi-class classification, a class oriented feature space is created for the K-nearest neighbours classifier. The test results show that the proposed method is able to achieve excellent performance in simulated environments.
Synthesis and Reactivity in Inorganic Metal-organic and Nano-metal Chemistry | 2016
M. Aziz Choudhary; Zahoor Ahmad; Aysha Hassan; Yar Khan; Muhammad Waqar Aslam
ZnO/CuO semiconducting nanocomposites have been prepared by stepwise hydrothermal method on porous 3D nickel substrate. The flower shaped p-typed CuO nanoflakes were successfully grown on the tips of n-type ZnO hexagonal rods. The material was characterized by scanning electron microscope, energy-dispersive X-ray spectroscopy, and X-ray diffraction. UV-vis diffuse reflectance spectroscopy was employed to determine the band gape and overlapping band region of the composite material. The as grown ZnO/CuO semiconducting nanocomposite was further analyzed for I-V behavior under UV light, which has shown the production of 0.016 A current at around 0.8 V potential difference.
military communications conference | 2013
Zhechen Zhu; Asoke K. Nandi; Muhammad Waqar Aslam
This paper solves the problem of Automatic Modulation Classification (AMC) without the knowledge of some key signal parameters. The main achievement is the estimation of signal centroids in a non-cooperative environment. The estimation is based on an approximate distribution theory and implemented with automatic constellation grid segmentation. The classification decision is made by finding the modulation candidates which provides the highest density at estimated centroids. The simulation results show that the proposed blind AMC classifier is able to achieve good accuracy in most cases while outperforming stateof-the-art methods under imperfect channel conditions.
international symposium on signals, circuits and systems | 2011
Zhechen Zhu; Muhammad Waqar Aslam; Asoke K. Nandi
Automatic modulation classification is used to identify automatically the modulation type of an incoming signal with limited or no prior knowledge to it. Various classifier systems have been developed to solve this problem. However, for certain types of modulations such as 16QAM and 64QAM, the classification performance under noisy condition still needs to be improved. In this paper, we propose a new AMC scheme by combining genetic programing (GP) with support vector machine (SVM) for the classification of 16QAM and 64QAM signals. The benchmark result shows that SVM assisted GP can produce better accuracy than some other existing methods.