Optimization of Steel Casting Process for Compressor Support Ring Based on ProCAST Simulation

This study investigates defect formation mechanisms and process optimization for a compressor support ring steel casting (ZG13Cr9Mo2Co1NiVNbNB alloy) using numerical simulation. Through systematic analysis of filling patterns, solidification behavior, and shrinkage defects, an optimized casting scheme with improved quality control was developed.

1. Casting Process Design

The steel casting process employed bottom gating system with three feeding risers and chill placements. Key process parameters were determined through modulus calculations:

$$ M = \frac{V}{S} $$

Where $M$ represents modulus (cm), $V$ volume (cm³), and $S$ cooling surface area (cm²). The optimized riser dimensions followed:

$$ M_{\text{riser}} = 1.2M_{\text{casting}} $$

Element C Cr Mo Co V
Content (%) 0.11-0.14 9.00-9.60 1.40-1.60 0.90-1.10 0.18-0.23

2. Numerical Simulation Methodology

The governing equations for steel casting simulation include:

Continuity equation:

$$ \frac{\partial \rho}{\partial t} + \nabla (\rho \mathbf{V}) = 0 $$

Momentum conservation:

$$ \rho \left( \frac{\partial \mathbf{V}}{\partial t} + \mathbf{V} \cdot \nabla \mathbf{V} \right) = -\nabla P + \mu \nabla^2 \mathbf{V} + \rho \mathbf{g} $$

Energy conservation:

$$ \rho c_p \frac{\partial T}{\partial t} = \nabla (k \nabla T) + Q_{\text{latent}} $$

The Niyama criterion predicted shrinkage porosity:

$$ \frac{G}{\sqrt{R}} < C_{\text{Niyama}} $$

Where $G$ denotes temperature gradient (°C/mm), $R$ cooling rate (°C/s), and $C_{\text{Niyama}}$ the critical value (0.8-1.1).

3. Process Optimization Strategy

Orthogonal testing revealed key parameter influences on defect formation:

Factor Level 1 Level 2 Level 3 Range
Pouring Temp (°C) 1585 1575 1565 13.96
Flow Rate (kg/s) 100 90 105 8.56
Mold Temp (°C) 20 25 30 0.57

The optimal parameters for steel casting were determined as:

$$ T_{\text{pour}} = 1575\,^\circ\text{C},\ \dot{m} = 100\,\text{kg/s},\ T_{\text{mold}} = 20\,^\circ\text{C} $$

4. Defect Control Mechanisms

Implementing exothermic risers and strategic chill placement achieved directional solidification:

$$ \frac{dT}{dz} = 2.8\text{–}3.2\,^\circ\text{C/cm} $$

Key improvements included:

  • Shrinkage porosity reduced from 16% to 8.4%
  • Riser efficiency increased by 40-50%
  • Microstructure uniformity enhanced (ASTM grain size 3-5)

5. Industrial Validation

Non-destructive testing confirmed the simulation accuracy:

Method Sensitivity Defect Detection
UT Φ2mm FBH 0%
MT 0.1mm surface 0%
PT 0.05mm depth 0%

The developed steel casting process demonstrates significant improvements in defect control and mechanical performance, providing technical guidance for heavy-section cast components in power generation systems.

“`html

Optimization of Steel Casting Process for Compressor Support Ring Based on ProCAST Simulation

This study investigates defect formation mechanisms and process optimization for a compressor support ring steel casting (ZG13Cr9Mo2Co1NiVNbNB alloy) using numerical simulation. Through systematic analysis of filling patterns, solidification behavior, and shrinkage defects, an optimized casting scheme with improved quality control was developed.

1. Casting Process Design

The steel casting process employed bottom gating system with three feeding risers and chill placements. Key process parameters were determined through modulus calculations:

$$ M = \frac{V}{S} $$

Where $M$ represents modulus (cm), $V$ volume (cm³), and $S$ cooling surface area (cm²). The optimized riser dimensions followed:

$$ M_{\text{riser}} = 1.2M_{\text{casting}} $$

Element C Cr Mo Co V
Content (%) 0.11-0.14 9.00-9.60 1.40-1.60 0.90-1.10 0.18-0.23

2. Numerical Simulation Methodology

The governing equations for steel casting simulation include:

Continuity equation:

$$ \frac{\partial \rho}{\partial t} + \nabla (\rho \mathbf{V}) = 0 $$

Momentum conservation:

$$ \rho \left( \frac{\partial \mathbf{V}}{\partial t} + \mathbf{V} \cdot \nabla \mathbf{V} \right) = -\nabla P + \mu \nabla^2 \mathbf{V} + \rho \mathbf{g} $$

Energy conservation:

$$ \rho c_p \frac{\partial T}{\partial t} = \nabla (k \nabla T) + Q_{\text{latent}} $$

The Niyama criterion predicted shrinkage porosity:

$$ \frac{G}{\sqrt{R}} < C_{\text{Niyama}} $$

Where $G$ denotes temperature gradient (°C/mm), $R$ cooling rate (°C/s), and $C_{\text{Niyama}}$ the critical value (0.8-1.1).

3. Process Optimization Strategy

Orthogonal testing revealed key parameter influences on defect formation:

Factor Level 1 Level 2 Level 3 Range
Pouring Temp (°C) 1585 1575 1565 13.96
Flow Rate (kg/s) 100 90 105 8.56
Mold Temp (°C) 20 25 30 0.57

The optimal parameters for steel casting were determined as:

$$ T_{\text{pour}} = 1575\,^\circ\text{C},\ \dot{m} = 100\,\text{kg/s},\ T_{\text{mold}} = 20\,^\circ\text{C} $$

4. Defect Control Mechanisms

Implementing exothermic risers and strategic chill placement achieved directional solidification:

$$ \frac{dT}{dz} = 2.8\text{–}3.2\,^\circ\text{C/cm} $$

Key improvements included:

  • Shrinkage porosity reduced from 16% to 8.4%
  • Riser efficiency increased by 40-50%
  • Microstructure uniformity enhanced (ASTM grain size 3-5)

5. Industrial Validation

Non-destructive testing confirmed the simulation accuracy:

Method Sensitivity Defect Detection
UT Φ2mm FBH 0%
MT 0.1mm surface 0%
PT 0.05mm depth 0%

The developed steel casting process demonstrates significant improvements in defect control and mechanical performance, providing technical guidance for heavy-section cast components in power generation systems.

“`

Scroll to Top