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Enhanced Sampling Model for Grid Material Inspection Using Analytic Hierarchy Process with Absolute Measurement


Core Concepts
The author proposes an enhanced sampling model based on the Analytic Hierarchy Process to improve grid material inspection accuracy and efficiency.
Abstract
The paper introduces a sampling model for grid material inspection using an improved Analytic Hierarchy Process (AHP). It aims to enhance detection accuracy by selecting equipment based on comprehensive performance scores. The method utilizes historical data from the Enterprise Control Platform (ECP) to determine inspection levels and optimize material selection. By prioritizing quality scores, the model improves testing efficiency compared to random sampling methods.
Stats
The weight distribution of performance indicators reveals that insulation structural performance accounts for 43.6%, electrical performance accounts for 32.1%, and sheath structural performance accounts for 24.3%. The judgment matrix compares each element of the lower level with the elements of the upper level based on judgment criteria to determine values. The test results are divided into four levels: excellent, good, qualified, and basic qualified, with corresponding scores assigned. Weighted quality scores are calculated by combining indicator weight values using a specific formula. A comparison with Artificial Neural Network (ANN) and Random Forest (RF) models shows significant performance advantages in predicting power cable quality levels.
Quotes
"The method selects characteristic variables of specific material equipment and calculates the weights of these variables based on AHP." "Compared to random sampling methods, the proposed model greatly improves the accuracy and efficiency of grid material testing."

Deeper Inquiries

How can this enhanced sampling model be adapted for other industries beyond power grids?

The enhanced sampling model based on the Analytic Hierarchy Process (AHP) can be adapted for various industries by customizing the evaluation criteria and indicators to suit specific requirements. For example, in manufacturing, the model could focus on quality control parameters such as defect rates, dimensional accuracy, or material strength. In healthcare, it could be tailored to assess patient outcomes or treatment effectiveness. By adjusting the weighting of different factors and incorporating industry-specific metrics, this model can effectively evaluate and prioritize items for inspection across a wide range of sectors.

What potential drawbacks or limitations might arise when implementing this model in real-world scenarios?

One potential drawback of implementing this model is the reliance on historical data from ECP for decision-making. If the historical data is incomplete, inaccurate, or biased, it may lead to flawed assessments and unreliable results. Additionally, there could be challenges in determining appropriate weightings for different evaluation criteria which may introduce subjectivity into the process. Moreover, there might be resistance from stakeholders who prefer traditional random sampling methods over a more complex AHP-based approach.

How can historical data from ECP be effectively utilized in other decision-making processes outside of material inspection?

Historical data from ECP can be leveraged in various decision-making processes beyond material inspection by serving as a foundation for predictive analytics and trend analysis. For instance: Predictive Maintenance: Historical maintenance records can help predict equipment failures before they occur. Supply Chain Management: Data on supplier performance over time can inform decisions related to vendor selection and procurement strategies. Customer Relationship Management: Analysis of past customer interactions stored in ECP can guide personalized marketing campaigns. Risk Assessment: Patterns identified through historical incident reports can aid in risk assessment and mitigation strategies. By applying advanced analytical techniques to historical data from ECP across different domains like operations management, finance, or marketing departments within an organization stand to benefit significantly from insights derived through informed decision-making processes built upon reliable historical datasets.
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