Abstract
Failure of element (s) in antenna arrays impair (s) symmetry and lead to unwanted distorted radiation pattern. The replacement of defective elements in aircraft antennas is a solution to the problem, but it remains a critical problem in space stations. In this paper, an antenna array diagnosis technique based on multivalued neural network (mNN) inverse modeling is proposed. Since inverse analytical input-to-output formulation is generally a challenging and important task in solving the inverse problem of array diagnosis, ANN is a compelling alternative, because it is trainable and learns from data in inverse modelling. The mNN technique proposed is an inverse modelling technique, which accommodates measurements for output model. This network takes radiation pattern samples with faults and matches it to the corresponding position or location of the faulty elements in that antenna array. In addition, we develop a new training error function, which focuses on the matching of each training sample by a value of our proposed inverse model, while the remaining values are free, and trained to match distorted radiation patterns. Thereby, mNN learns all training data by redirecting the faulty elements patterns into various values of the inverse model. Therefore, mNN is able to perform accurate array diagnosis in an automated and simpler manner.
Highlights
Failures identification and detection in large antenna array is a relevant topic both in theory and in practice with various applications in both military and civilian market
This study aims at further simplification of the inverse modeling procedure and resolve the non-uniqueness problem in more automated and simpler manner for antenna array diagnosis
We proposed a training procedure and test error functions towards optimal antenna array diagnosis
Summary
Failures identification and detection in large antenna array is a relevant topic both in theory and in practice with various applications in both military and civilian market. Large array employed in RADAR systems, full MIMO systems, massive MIMO, and personal communication devices that require complex antenna arrays. There will always be a demand for fast and accurate complex antenna systems diagnosis, to resolve the unacceptable radiation pattern distortion caused by element (s) failure in the array (Figure.). Many antenna array diagnosis methods, based on genetic algorithms [1], [2], exhaustive search [3], matrix inversion [4], and MUSIC [5], have been developed in literature to identify faulty antenna elements in an array. All the methods in [1,2,3,4,5] need big measurement samples for large antenna arrays, to get reliable diagnosis. The methods in [1]-[9]
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