Brief research of traditional and AI-based models for IMD2 cancellation
A.A. Degtyarev, N. V. Bakholdin, A.Y. Maslovskiy, S.A. Bakhurin

TL;DR
This paper compares traditional polynomial models and neural network-based models for IMD2 cancellation, demonstrating that a low-complexity NN approach can achieve similar performance to polynomial methods with reduced computational resources.
Contribution
It introduces a low-complexity feed-forward neural network model for IMD2 cancellation that competes with traditional polynomial models in performance and efficiency.
Findings
NN model achieves comparable IMD2 cancellation to polynomial models.
The proposed NN model requires less computational resources.
Test results confirm the effectiveness of the NN approach.
Abstract
Due to the limited isolation of duplexer's stopband transceivers operating in frequency division duplex (FDD) encounter a leakage of the transmitted signal onto the receiving path. Leakage signal with the combination of the second-order nonlinearity of the low noise amplifier (LNA) and receiver down-conversion mixer may lead to second-order intermodulation distortion (IMD2) generation thus greatly reducing the receiver sensitivity. Cancellation of undesirable interferences based on adaptation of traditional models such as memoryless and memory polynomials, spline polynomial based Hammerstein and Wiener-Hammerstein models proved its efficiency in case of well-known nonlinearity nature. On the other hand, currently there is an intensive research in the field of nonlinearity detection by means of neural network (NN) structures. NN-based IMD cancellers are effective in the case of unknown…
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Taxonomy
TopicsAdvanced Wireless Network Optimization
