In this paper, we propose a new upper bound on the error probability performance of maximum-likelihood (ML) detection. The proposed approach provides a much tighter upper bound when compared to the traditionally used union bound, especially when the number of pairwise error probabilities (PEPs) is large. In fact, the proposed approach tightens the union bound by first assuming that a detection error always occurs in a deep fading event where the channel gain is lower than a certain threshold. A minimisation is then taken with respect to the gain threshold in order to make the upper bound as tight as possible. We also prove that the objective function has a single minimiser under several general assumptions so that the minimiser can be easily found using optimisation algorithms. The expression of the new upper bound under correlated Rayleigh fading channels is derived and several analytical and numerical examples are provided to show the performance of the proposed bound.
翻译:在本文中,我们建议对最大似差值检测的误差概率性能设定一个新的上限。 与传统上使用的工会约束值相比,拟议方法提供了更紧得多的上限, 特别是当对称误差概率(PEPs)的数量很大时。 事实上, 拟议的方法使工会更加严格, 首先假设频道收益低于某一阈值的深度淡化事件总是发生检测误差。 然后对增益阈值进行最小化, 以使上限尽可能紧凑。 我们还证明,在几个一般性假设下,目标函数有一个单一的最小值, 以便利用优化算法很容易找到最小值。 得出了雷利漂流渠道下新的上限值,并提供了几个分析和数字实例,以显示拟议约束的性能。