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Achievable Rate Analysis of Ordered Reliability Bits Guessing Random Additive Noise Decoding (ORBGRAND) for General Bit Channels and Application in Bit-Interleaved Coded Modulation (BICM)


Core Concepts
The paper derives the generalized mutual information (GMI) of ordered reliability bits guessing random additive noise decoding (ORBGRAND) for memoryless binary-input channels with general output conditional probability distributions. The analysis provides insights into understanding the gap between the ORBGRAND achievable rate and the channel mutual information. As an application, the paper studies the ORBGRAND achievable rate for bit-interleaved coded modulation (BICM), showing that the gap is typically small, suggesting the feasibility of ORBGRAND for high-order coded modulation schemes.
Abstract
The paper focuses on analyzing the achievable rate of ordered reliability bits guessing random additive noise decoding (ORBGRAND) for general memoryless binary-input bit channels. Key highlights: The paper derives the generalized mutual information (GMI) of ORBGRAND for memoryless binary-input channels with general output conditional probability distributions. The analysis provides insights into understanding the gap between the ORBGRAND achievable rate and the channel mutual information. It shows that the gap is related to the linearity of the cumulative distribution function (CDF) of the magnitude of the channel log-likelihood ratio (LLR). As an application, the paper studies the ORBGRAND achievable rate for bit-interleaved coded modulation (BICM) over AWGN and Rayleigh fading channels with various modulation orders and labelings. The numerical results indicate that the gap between the ORBGRAND achievable rate and the channel mutual information is typically small for BICM, suggesting the feasibility of ORBGRAND for high-order coded modulation schemes.
Stats
The paper provides the following key figures and metrics: Plots of the CDF of the magnitude of the channel LLR (Ψ(t)) under AWGN and Rayleigh fading channels for different SNR values (Fig. 1). Plots of the ORBGRAND achievable rate and the channel mutual information under QPSK, 8PSK, and 16QAM for AWGN and Rayleigh fading channels with Gray and set-partitioning labelings (Figs. 5-8).
Quotes
None.

Deeper Inquiries

How can the analysis of ORBGRAND achievable rate be extended to channels with memory or non-uniform input distributions

The analysis of ORBGRAND achievable rate can be extended to channels with memory or non-uniform input distributions by considering the impact of these factors on the decoding process. In channels with memory, the previous channel outputs influence the current output, leading to dependencies that need to be accounted for in the decoding algorithm. This can be addressed by incorporating memory models into the analysis and adjusting the decoding criteria to handle the memory effects. For non-uniform input distributions, the probabilities of different symbols occurring vary, affecting the reliability of the received symbols. In such cases, the decoding metric and error pattern generation in ORBGRAND need to be adapted to reflect the varying probabilities of different symbols. Analyzing the achievable rate in channels with non-uniform input distributions involves calculating the GMI under these specific conditions, considering the impact of the distribution on the decoding performance. By extending the analysis to channels with memory or non-uniform input distributions, a more comprehensive understanding of the performance limits of ORBGRAND in diverse channel scenarios can be obtained, enabling the optimization of the decoding process for a wider range of communication channels.

What are the potential limitations or drawbacks of using ORBGRAND for high-order coded modulation schemes, and how can they be addressed

One potential limitation of using ORBGRAND for high-order coded modulation schemes is the complexity of generating error patterns for a large number of constellation points. As the modulation order increases, the number of possible error patterns grows exponentially, leading to computational challenges in efficiently generating and sorting these patterns. This can result in increased decoding latency and hardware complexity, impacting the practical implementation of ORBGRAND for high-order modulations. To address this limitation, advanced error pattern generation algorithms and hardware architectures can be developed to optimize the decoding process for high-order modulations. Techniques such as parallel processing, optimized sorting criteria, and efficient memory management can be employed to enhance the scalability of ORBGRAND for complex modulation schemes. Additionally, leveraging parallelization and hardware acceleration can improve the speed and efficiency of error pattern generation, making ORBGRAND more suitable for high-order coded modulation scenarios. By overcoming the challenges related to complexity and scalability, ORBGRAND can be effectively utilized for high-order coded modulation schemes, offering near-optimal decoding performance with reduced computational overhead.

What other practical applications or use cases of ORBGRAND could be explored beyond the BICM scenario presented in the paper

Beyond the scenario of BICM presented in the paper, ORBGRAND can find practical applications in various communication systems and scenarios. Some potential use cases include: Wireless Communication Systems: ORBGRAND can be applied in wireless communication systems to improve decoding performance in fading channels. By leveraging the ordered reliability bits approach, ORBGRAND can enhance error correction capabilities in challenging wireless environments. Satellite Communication: ORBGRAND can be utilized in satellite communication systems to mitigate the effects of noise and interference. The ordered reliability bits decoding strategy can enhance the reliability of data transmission over long distances and in noisy satellite communication channels. Optical Communication: In optical communication systems, ORBGRAND can be employed to enhance the decoding of high-speed data transmissions. By efficiently utilizing soft information and ranking relationships, ORBGRAND can improve the decoding accuracy in optical communication links. IoT and Sensor Networks: ORBGRAND can be integrated into IoT devices and sensor networks to enhance data transmission reliability. The ordered reliability bits decoding method can improve the robustness of communication in resource-constrained IoT environments. Exploring these practical applications of ORBGRAND beyond BICM can lead to advancements in various communication domains, offering improved decoding performance and reliability in diverse operational scenarios.
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