Published June 1, 2020 | Version v1
Journal article Open

Optimized BER for channel equalizer using cuckoo search and neural network

  • 1. Baddi University of Emerging Sciences and Technology
  • 2. Chandigarh Engineering College

Description

The digital data transfer faces issues regarding Inter-Symbol Interference (ISI); therefore, the error rate becomes dependent upon channel estimation and its equalization. This paper focuses on the development of a method for optimizing the channel data to improve ISI by utilizing a swarm intelligence series algorithm termed as Cuckoo Search (CS). The adjusted data through CS is cross-validated using Artificial Neural Network (ANN). The data acceptance rate is considered with 0-10% marginal error which varies in the given range with different bit streams. The performance evaluation of the proposed algorithm using the Average Bit Error Rate (A-BER) and Logarithmic Bit Error Rate (L-BER) had shown an overall improvement of 30-50% when compared with the Kalman filter based algorithm.

Files

23 19548 10Dec 5Dec 16Apr N.pdf

Files (494.8 kB)

Name Size Download all
md5:b2143e6c8a523f9dbf2e9ebb857d964e
494.8 kB Preview Download