Jean-Marc ValinIain B. Collings
An interference-normalised least mean square (INLMS) algorithm for robust adaptive filtering is proposed. The INLMS algorithm extends the gradient-adaptive learning rate approach to the case where the signals are non-stationary. In particular, we show that the INLMS algorithm can work even for highly non-stationary interference signals, where previous gradient-adaptive learning rate algorithms fail.
P.N.S. TejasriK. AnushaK. Sangeet KumarNukella VenkateshY. Yamini Devi
Abdulrahman U. AlsaggafMuhammad ArifUbaid M. Al‐SaggafMuhammad Moinuddin
Jirasak TanpreeyachayaIchi TakumiMasayasu Hata
Hamed ModagheghHossein Khosravi R.Saeed Ahoon ManeshHadi Sadoghi Yazdi
Rahmad HidayatGivy Devira RamadyNinik Sri LestariAndrew Ghea MahardikaHetty Fadriani