基于自适应模糊逻辑启发的路径寿命因子预测模型

Subha R, Anandakumar H
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引用次数: 2

摘要

模糊理论是预测动态环境下实体状态的最优方法。模糊理论结合了不同的语言变量和隶属函数,通过执行模糊推理引擎来估计实体的状态。在manet中,路径稳定性的预测被确定为通过派生模糊理论的好处来潜在地识别,因为它是识别动态条件下路径状态的合适候选。与灰色链和马尔可夫链相比,模糊理论在探索路径稳定性确定下的不同可能状态方面更有意义。本文提出了一种基于自适应模糊逻辑启发的路径寿命因子预测模型(AFLIPLFFM),用于准确预测网络的路径稳定性,以提高网络的吞吐量和数据包传输率。AFLIPLFFM方案首先计算移动节点的IPR。然后将其作为模糊推理引擎的输入,基于三角隶属函数的if - then规则的公式计算作为路径稳定性的输出。该算法继承了三角隶属函数和Mamdani模糊推理机的优点,实现了路径稳定性预测的目标。
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Adaptive fuzzy logic inspired path longevity factor-based forecasting model reliable routing in MANETs

Fuzzy theory is the optimal method for predicting the state of an entity in dynamic situations. The fuzzy theory incorporates different linguistic variables and membership functions for estimating the state of the entity through the enforcement of the fuzzy inference engine. In MANETs, the prediction of path stability is determined to be potentially identified by deriving the benefits of fuzzy theory since it is a suitable candidate for identifying the state of the path in dynamic conditions. Fuzzy theory is more significant in exploring different possible states under path stability determination than the Gray and Markov chains. This paper presents the Adaptive Fuzzy Logic Inspired Path Longevity Factor-Based Forecasting Model(AFLIPLFFM) for accurate prediction of path stability to improve the throughput and Packet delivery ratio in the network. The AFLIPLFFM scheme first computes the IPR of mobile nodes. It then uses it as input to the fuzzy inference engine for computing the output as path stability based on the formulation of IF-THEN-based rules for triangular membership function. It also inherited the merits of the triangular membership function and Mamdani Fuzzy Inference Engine for accomplishing the objective of path stability prediction.

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