Javascript must be enabled to continue!
Intelligent Hybrid Machine Learning and Fuzzy Decision System for Predictive Fiber Monitoring
View through CrossRef
Large-scale fiber optic telecommunication networks operate under heterogeneous and uncertain environmental conditions, which makes early fault detection a challenging task. Conventional OTDR-based monitoring approaches are mainly reactive and rely solely on optical signal analysis, providing limited capability to model uncertainty and gradual degradation effects. To address these limitations, this paper proposes an intelligent distributed sensing framework that integrates OTDR-based fiber monitoring with environmental sensor networks using a hybrid fuzzy–machine learning approach. In the proposed framework, optical fibers function as continuous sensing elements, while distributed sensors supply complementary temperature and soil moisture measurements. OTDR and sensor outputs are fused into a unified mixed trace and analyzed in both time and frequency domains. Discriminative features are extracted and reduced using principal component analysis to improve fault repairability. A fuzzy inference system is employed to model uncertainty, vagueness, and nonlinear relationships in the fused mixed trace, enabling robust reasoning under noisy and incomplete data conditions. Supervised and unsupervised machine learning models are combined with fuzzy decision rules to enhance fault classification and early degradation detection. The proposed fuzzy-enhanced framework is validated through real-world deployment on a national-scale telecom network, achieving fault classification accuracy of up to 94.1% and enabling prediction of fiber failures 48–72 h in advance. Compared to conventional OTDR-only monitoring, the proposed approach significantly improves fault detection time, localization accuracy, and decision reliability, demonstrating its effectiveness for intelligent and scalable fiber monitoring.
Title: Intelligent Hybrid Machine Learning and Fuzzy Decision System for Predictive Fiber Monitoring
Description:
Large-scale fiber optic telecommunication networks operate under heterogeneous and uncertain environmental conditions, which makes early fault detection a challenging task.
Conventional OTDR-based monitoring approaches are mainly reactive and rely solely on optical signal analysis, providing limited capability to model uncertainty and gradual degradation effects.
To address these limitations, this paper proposes an intelligent distributed sensing framework that integrates OTDR-based fiber monitoring with environmental sensor networks using a hybrid fuzzy–machine learning approach.
In the proposed framework, optical fibers function as continuous sensing elements, while distributed sensors supply complementary temperature and soil moisture measurements.
OTDR and sensor outputs are fused into a unified mixed trace and analyzed in both time and frequency domains.
Discriminative features are extracted and reduced using principal component analysis to improve fault repairability.
A fuzzy inference system is employed to model uncertainty, vagueness, and nonlinear relationships in the fused mixed trace, enabling robust reasoning under noisy and incomplete data conditions.
Supervised and unsupervised machine learning models are combined with fuzzy decision rules to enhance fault classification and early degradation detection.
The proposed fuzzy-enhanced framework is validated through real-world deployment on a national-scale telecom network, achieving fault classification accuracy of up to 94.
1% and enabling prediction of fiber failures 48–72 h in advance.
Compared to conventional OTDR-only monitoring, the proposed approach significantly improves fault detection time, localization accuracy, and decision reliability, demonstrating its effectiveness for intelligent and scalable fiber monitoring.
Related Results
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
The scope of sensor networks and the Internet of Things spanning rapidly to diversified domains but not limited to sports, health, and business trading. In recent past, the sensors...
Konstruksi Sistem Inferensi Fuzzy Menggunakan Subtractive Fuzzy C-Means pada Data Parkinson
Konstruksi Sistem Inferensi Fuzzy Menggunakan Subtractive Fuzzy C-Means pada Data Parkinson
Abstract. Fuzzy Inference System requires several stages to get the output, 1) formation of fuzzy sets, 2) formation of rules, 3) application of implication functions, 4) compositi...
Generated Fuzzy Quasi-ideals in Ternary Semigroups
Generated Fuzzy Quasi-ideals in Ternary Semigroups
Here in this paper, we provide characterizations of fuzzy quasi-ideal in terms of level and strong level subsets. Along with it, we provide expression for the generated fuzzy quasi...
New Approaches of Generalised Fuzzy Soft sets on fuzzy Codes and Its Properties on Decision-Makings
New Approaches of Generalised Fuzzy Soft sets on fuzzy Codes and Its Properties on Decision-Makings
Background Several scholars defined the concepts of fuzzy soft set theory and their application on decision-making problem. Based on this concept, researchers defined the generalis...
New Approaches of Generalised Fuzzy Soft sets on fuzzy Codes and Its Properties on Decision-Makings
New Approaches of Generalised Fuzzy Soft sets on fuzzy Codes and Its Properties on Decision-Makings
Background Several scholars defined the concepts of fuzzy soft set theory and their application on decision-making problem. Based on this concept, researchers defined the generalis...
ω – SUBSEMIRING FUZZY
ω – SUBSEMIRING FUZZY
Mapping ρ is called a fuzzy subset of an empty set of S if ρ is the mapping from S to the closed interval [0,1]. A fuzzy subset ρ introduced into this paper is a fuzzy subset of se...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
FUZZY‐FUZZY AUTOMATA
FUZZY‐FUZZY AUTOMATA
Based on the concept of fuzzy sets of type 2 (or fuzzy‐fuzzy sets) defined by L. A. Zadeh, fuzzy‐fuzzy automata ate newly formulated and some properties of these automata are inves...

