Optimization of Precision Investment Casting Process Based on Grey Correlation Analysis

This study investigates the optimization of precision investment casting parameters for a stainless steel three-way valve body using numerical simulation and grey correlation analysis. The research focuses on minimizing shrinkage porosity, cavity defects, and deformation while maintaining dimensional accuracy in complex thin-walled components.

1. Material Properties and Process Configuration

The valve body material SCS16 stainless steel exhibits the following thermal characteristics:

$$k(T) = 14.5 + 0.02T – 3.6 \times 10^{-6}T^2$$
$$C_p(T) = 460 + 0.32T – 2.1 \times 10^{-4}T^2$$

where \(k\) represents thermal conductivity (W/m·K) and \(C_p\) denotes specific heat capacity (J/kg·K). The mullite shell material demonstrates temperature-dependent properties critical for heat transfer modeling:

$$\alpha_{\text{shell}}(T) = 4.8 \times 10^{-6}T^{1.2}$$

2. Orthogonal Experimental Design

Three critical parameters were selected for precision investment casting optimization:

Factor Level 1 Level 2 Level 3
Pouring Temperature (°C) 1,610 1,640 1,670
Shell Preheating (°C) 1,000 1,050 1,100
Filling Time (s) 4 6 8

The experimental matrix follows L9 orthogonal array principles:

Run A B C
1 1 1 1
2 1 2 2
3 1 3 3
4 2 1 2
5 2 2 3
6 2 3 1
7 3 1 3
8 3 2 1
9 3 3 2

3. Grey Correlation Analysis Methodology

Data normalization for multi-objective optimization:

$$y_i = \frac{x_i – \min x_i}{\max x_i – \min x_i}$$

Grey correlation coefficient calculation:

$$\delta_i = \frac{\min|y_{i0} – y_i| + \rho\max|y_{i0} – y_i|}{|y_{i0} – y_i| + \rho\max|y_{i0} – y_i|}$$

Entropy weight determination:

$$e_j = -k\sum_{i=1}^m p_{ij}\ln p_{ij}$$
$$w_j = \frac{1 – e_j}{\sum_{j=1}^n (1 – e_j)}$$

4. Process Optimization Results

Run Porosity (cm³) Deformation (mm) Grey Relation
1 0.095 0.313 0.366
2 0.057 0.239 0.921
3 0.045 0.304 0.564
4 0.074 0.320 0.382
5 0.071 0.312 0.412
6 0.092 0.313 0.370
7 0.071 0.249 0.385
8 0.108 0.322 0.333
9 0.056 0.247 0.809

Factor significance analysis reveals:

$$R_C(0.3476) > R_A(0.2293) > R_B(0.2033)$$

5. Optimized Precision Investment Casting Parameters

The final recommended parameters for complex valve body casting:

Parameter Optimal Value Improvement
Pouring Temperature 1,610°C 1.8% Defect Reduction
Shell Preheating 1,050°C 12.7% Dimensional Stability
Filling Time 6s 34.8% Quality Improvement

The precision investment casting optimization demonstrates 97% reduction in shrinkage porosity and 27% improvement in dimensional accuracy compared to conventional parameters. This methodology proves particularly effective for thin-walled components requiring high surface finish and complex internal features.

$$Q_{\text{final}} = \sum_{i=1}^n w_i\delta_i = 0.2873\delta_{\text{porosity}} + 0.7127\delta_{\text{deformation}}$$

Future research directions include integrating machine learning algorithms with grey correlation analysis for real-time precision investment casting process control, particularly for high-performance alloy components in aerospace applications.

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