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dgn-to-excel

@datadrivenconstruction · 收录于 1 周前

Convert DGN files (v7-v8) to Excel databases. Extract elements, levels, and properties from infrastructure CAD files.

适合你,如果经常需要从DGN文件中提取结构化数据

/ 下载安装
dgn-to-excel.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/dgn-to-excel
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/dgn-to-excel
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/dgn-to-excel
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

技能原文 SKILL.md作者撰写 · MIT · 34e0d78

DGN to Excel Conversion

Business Case
Problem Statement

DGN files are common in infrastructure and civil engineering:

  • Transportation and highway design
  • Bridge and tunnel projects
  • Utility networks
  • Rail infrastructure

Extracting structured data from DGN files for analysis and reporting can be challenging.

Solution

Convert DGN files to structured Excel databases, supporting both v7 and v8 formats.

Business Value
  • Infrastructure support - Civil engineering focused
  • Legacy format support - V7 and V8 DGN files
  • Data extraction - Levels, cells, text, geometry
  • Batch processing - Process multiple files
  • Structured output - Excel format for analysis
Technical Implementation
CLI Syntax
DgnExporter.exe <input_dgn>
Supported Versions

| Version | Description | |---------|-------------| | V7 DGN | Legacy MicroStation format (pre-V8) | | V8 DGN | Modern MicroStation format | | V8i DGN | MicroStation V8i format |

Output Format

| Output | Description | |--------|-------------| | .xlsx | Excel database with all elements |

Examples
# Basic conversion
DgnExporter.exe "C:\Projects\Bridge.dgn"

# Batch processing
for /R "C:\Infrastructure" %f in (*.dgn) do DgnExporter.exe "%f"

# PowerShell batch
Get-ChildItem "C:\Projects\*.dgn" -Recurse | ForEach-Object {
    & "C:\DDC\DgnExporter.exe" $_.FullName
}
Python Integration
import subprocess
import pandas as pd
from pathlib import Path
from typing import List, Optional, Dict, Any
from dataclasses import dataclass
from enum import Enum


class DGNElementType(Enum):
    """DGN element types."""
    CELL_HEADER = 2
    LINE = 3
    LINE_STRING = 4
    SHAPE = 6
    TEXT_NODE = 7
    CURVE = 11
    COMPLEX_CHAIN = 12
    COMPLEX_SHAPE = 14
    ELLIPSE = 15
    ARC = 16
    TEXT = 17
    SURFACE = 18
    SOLID = 19
    BSPLINE_CURVE = 21
    POINT_STRING = 22
    DIMENSION = 33
    SHARED_CELL = 35


@dataclass
class DGNElement:
    """Represents a DGN element."""
    element_id: int
    element_type: int
    type_name: str
    level: int
    color: int
    weight: int
    style: int

    # Geometry
    range_low_x: Optional[float] = None
    range_low_y: Optional[float] = None
    range_low_z: Optional[float] = None
    range_high_x: Optional[float] = None
    range_high_y: Optional[float] = None
    range_high_z: Optional[float] = None

    # Cell/Text specific
    cell_name: Optional[str] = None
    text_content: Optional[str] = None


@dataclass
class DGNLevel:
    """Represents a DGN level."""
    number: int
    name: str
    is_displayed: bool
    is_frozen: bool
    element_count: int


class DGNExporter:
    """DGN to Excel converter using DDC DgnExporter CLI."""

    def __init__(self, exporter_path: str = "DgnExporter.exe"):
        self.exporter = Path(exporter_path)
        if not self.exporter.exists():
            raise FileNotFoundError(f"DgnExporter not found: {exporter_path}")

    def convert(self, dgn_file: str) -> Path:
        """Convert DGN file to Excel."""
        dgn_path = Path(dgn_file)
        if not dgn_path.exists():
            raise FileNotFoundError(f"DGN file not found: {dgn_file}")

        cmd = [str(self.exporter), str(dgn_path)]
        result = subprocess.run(cmd, capture_output=True, text=True)

        if result.returncode != 0:
            raise RuntimeError(f"Export failed: {result.stderr}")

        return dgn_path.with_suffix('.xlsx')

    def batch_convert(self, folder: str,
                      include_subfolders: bool = True) -> List[Dict[str, Any]]:
        """Convert all DGN files in folder."""
        folder_path = Path(folder)
        pattern = "**/*.dgn" if include_subfolders else "*.dgn"

        results = []
        for dgn_file in folder_path.glob(pattern):
            try:
                output = self.convert(str(dgn_file))
                results.append({
                    'input': str(dgn_file),
                    'output': str(output),
                    'status': 'success'
                })
                print(f"✓ Converted: {dgn_file.name}")
            except Exception as e:
                results.append({
                    'input': str(dgn_file),
                    'output': None,
                    'status': 'failed',
                    'error': str(e)
                })
                print(f"✗ Failed: {dgn_file.name} - {e}")

        return results

    def read_elements(self, xlsx_file: str) -> pd.DataFrame:
        """Read converted Excel as DataFrame."""
        return pd.read_excel(xlsx_file, sheet_name="Elements")

    def get_levels(self, xlsx_file: str) -> pd.DataFrame:
        """Get level summary."""
        df = self.read_elements(xlsx_file)

        if 'Level' not in df.columns:
            raise ValueError("Level column not found")

        summary = df.groupby('Level').agg({
            'ElementId': 'count'
        }).reset_index()
        summary.columns = ['Level', 'Element_Count']
        return summary.sort_values('Level')

    def get_element_types(self, xlsx_file: str) -> pd.DataFrame:
        """Get element type statistics."""
        df = self.read_elements(xlsx_file)

        type_col = 'ElementType' if 'ElementType' in df.columns else 'Type'
        if type_col not in df.columns:
            return pd.DataFrame()

        summary = df.groupby(type_col).agg({
            'ElementId': 'count'
        }).reset_index()
        summary.columns = ['Element_Type', 'Count']
        return summary.sort_values('Count', ascending=False)

    def get_cells(self, xlsx_file: str) -> pd.DataFrame:
        """Get cell references (similar to blocks in DWG)."""
        df = self.read_elements(xlsx_file)

        # Filter to cell elements
        cells = df[df['ElementType'].isin([2, 35])]  # CELL_HEADER, SHARED_CELL

        if cells.empty or 'CellName' not in cells.columns:
            return pd.DataFrame(columns=['Cell_Name', 'Count'])

        summary = cells.groupby('CellName').agg({
            'ElementId': 'count'
        }).reset_index()
        summary.columns = ['Cell_Name', 'Count']
        return summary.sort_values('Count', ascending=False)

    def get_text_content(self, xlsx_file: str) -> pd.DataFrame:
        """Extract all text from DGN."""
        df = self.read_elements(xlsx_file)

        # Filter to text elements
        text_types = [7, 17]  # TEXT_NODE, TEXT
        texts = df[df['ElementType'].isin(text_types)]

        if 'TextContent' in texts.columns:
            return texts[['ElementId', 'Level', 'TextContent']].copy()
        return texts[['ElementId', 'Level']].copy()

    def get_statistics(self, xlsx_file: str) -> Dict[str, Any]:
        """Get comprehensive DGN statistics."""
        df = self.read_elements(xlsx_file)

        stats = {
            'total_elements': len(df),
            'levels_used': df['Level'].nunique() if 'Level' in df.columns else 0,
            'element_types': df['ElementType'].nunique() if 'ElementType' in df.columns else 0
        }

        # Calculate extents
        for coord in ['X', 'Y', 'Z']:
            low_col = f'RangeLow{coord}'
            high_col = f'RangeHigh{coord}'
            if low_col in df.columns and high_col in df.columns:
                stats[f'min_{coord.lower()}'] = df[low_col].min()
                stats[f'max_{coord.lower()}'] = df[high_col].max()

        return stats


class DGNAnalyzer:
    """Advanced DGN analysis for infrastructure projects."""

    def __init__(self, exporter: DGNExporter):
        self.exporter = exporter

    def analyze_infrastructure(self, dgn_file: str) -> Dict[str, Any]:
        """Analyze DGN for infrastructure elements."""
        xlsx = self.exporter.convert(dgn_file)
        df = self.exporter.read_elements(str(xlsx))

        analysis = {
            'file': dgn_file,
            'statistics': self.exporter.get_statistics(str(xlsx)),
            'levels': self.exporter.get_levels(str(xlsx)).to_dict('records'),
            'element_types': self.exporter.get_element_types(str(xlsx)).to_dict('records'),
            'cells': self.exporter.get_cells(str(xlsx)).to_dict('records')
        }

        # Identify infrastructure-specific elements
        if 'ElementType' in df.columns:
            # Lines and shapes (often roads, boundaries)
            lines = df[df['ElementType'].isin([3, 4, 6, 14])].shape[0]
            analysis['linear_elements'] = lines

            # Complex elements (often structures)
            complex_elements = df[df['ElementType'].isin([12, 14, 18, 19])].shape[0]
            analysis['complex_elements'] = complex_elements

            # Annotation elements
            annotations = df[df['ElementType'].isin([7, 17, 33])].shape[0]
            analysis['annotations'] = annotations

        return analysis

    def compare_revisions(self, dgn1: str, dgn2: str) -> Dict[str, Any]:
        """Compare two DGN revisions."""
        xlsx1 = self.exporter.convert(dgn1)
        xlsx2 = self.exporter.convert(dgn2)

        df1 = self.exporter.read_elements(str(xlsx1))
        df2 = self.exporter.read_elements(str(xlsx2))

        levels1 = set(df1['Level'].unique()) if 'Level' in df1.columns else set()
        levels2 = set(df2['Level'].unique()) if 'Level' in df2.columns else set()

        return {
            'revision1': dgn1,
            'revision2': dgn2,
            'element_count_diff': len(df2) - len(df1),
            'levels_added': list(levels2 - levels1),
            'levels_removed': list(levels1 - levels2),
            'common_levels': len(levels1 & levels2)
        }

    def extract_coordinates(self, xlsx_file: str) -> pd.DataFrame:
        """Extract element coordinates for GIS integration."""
        df = self.exporter.read_elements(xlsx_file)

        coord_cols = ['ElementId', 'Level', 'ElementType']
        for col in ['RangeLowX', 'RangeLowY', 'RangeLowZ',
                    'RangeHighX', 'RangeHighY', 'RangeHighZ',
                    'CenterX', 'CenterY', 'CenterZ']:
            if col in df.columns:
                coord_cols.append(col)

        return df[coord_cols].copy()


class DGNLevelManager:
    """Manage DGN level structures."""

    def __init__(self, exporter: DGNExporter):
        self.exporter = exporter

    def get_level_map(self, xlsx_file: str) -> Dict[int, str]:
        """Create level number to name mapping."""
        df = self.exporter.read_elements(xlsx_file)

        if 'Level' not in df.columns:
            return {}

        # MicroStation levels are typically numbered 1-63 (V7) or unlimited (V8)
        level_map = {}
        for level in df['Level'].unique():
            level_map[int(level)] = f"Level_{level}"

        return level_map

    def filter_by_levels(self, xlsx_file: str,
                         levels: List[int]) -> pd.DataFrame:
        """Filter elements by level numbers."""
        df = self.exporter.read_elements(xlsx_file)
        return df[df['Level'].isin(levels)]

    def get_level_usage_report(self, xlsx_file: str) -> pd.DataFrame:
        """Generate level usage report."""
        df = self.exporter.read_elements(xlsx_file)

        if 'Level' not in df.columns or 'ElementType' not in df.columns:
            return pd.DataFrame()

        # Cross-tabulate levels and element types
        report = pd.crosstab(df['Level'], df['ElementType'], margins=True)
        return report


# Convenience functions
def convert_dgn_to_excel(dgn_file: str,
                         exporter_path: str = "DgnExporter.exe") -> str:
    """Quick conversion of DGN to Excel."""
    exporter = DGNExporter(exporter_path)
    output = exporter.convert(dgn_file)
    return str(output)


def analyze_dgn(dgn_file: str,
                exporter_path: str = "DgnExporter.exe") -> Dict[str, Any]:
    """Analyze DGN file and return summary."""
    exporter = DGNExporter(exporter_path)
    analyzer = DGNAnalyzer(exporter)
    return analyzer.analyze_infrastructure(dgn_file)
Output Structure
Excel Sheets

| Sheet | Content | |-------|---------| | Elements | All DGN elements with properties | | Levels | Level definitions | | Cells | Cell library |

Element Columns

| Column | Type | Description | |--------|------|-------------| | ElementId | int | Unique element ID | | ElementType | int | Type code (3=Line, 17=Text, etc.) | | Level | int | Level number | | Color | int | Color index | | Weight | int | Line weight | | Style | int | Line style | | RangeLowX/Y/Z | float | Bounding box minimum | | RangeHighX/Y/Z | float | Bounding box maximum | | CellName | string | Cell name (for cell elements) | | TextContent | string | Text content (for text elements) |

Quick Start
# Initialize exporter
exporter = DGNExporter("C:/DDC/DgnExporter.exe")

# Convert DGN to Excel
xlsx = exporter.convert("C:/Projects/Highway.dgn")
print(f"Output: {xlsx}")

# Read elements
df = exporter.read_elements(str(xlsx))
print(f"Total elements: {len(df)}")

# Get level statistics
levels = exporter.get_levels(str(xlsx))
print(levels)

# Get element types
types = exporter.get_element_types(str(xlsx))
print(types)
Common Use Cases
1. Infrastructure Analysis
exporter = DGNExporter()
analyzer = DGNAnalyzer(exporter)

analysis = analyzer.analyze_infrastructure("highway.dgn")
print(f"Total elements: {analysis['statistics']['total_elements']}")
print(f"Linear elements: {analysis['linear_elements']}")
print(f"Annotations: {analysis['annotations']}")
2. Level Audit
exporter = DGNExporter()
xlsx = exporter.convert("bridge.dgn")
levels = exporter.get_levels(str(xlsx))

# Check for unused standard levels
for idx, row in levels.iterrows():
    print(f"Level {row['Level']}: {row['Element_Count']} elements")
3. GIS Integration
analyzer = DGNAnalyzer(exporter)
xlsx = exporter.convert("utilities.dgn")
coords = analyzer.extract_coordinates(str(xlsx))

# Export for GIS
coords.to_csv("coordinates.csv", index=False)
4. Revision Comparison
analyzer = DGNAnalyzer(exporter)
diff = analyzer.compare_revisions("rev1.dgn", "rev2.dgn")
print(f"Elements changed: {diff['element_count_diff']}")
Integration with DDC Pipeline
# Infrastructure pipeline: DGN → Excel → Analysis
from dgn_exporter import DGNExporter, DGNAnalyzer

# 1. Convert DGN
exporter = DGNExporter("C:/DDC/DgnExporter.exe")
xlsx = exporter.convert("highway_project.dgn")

# 2. Analyze structure
stats = exporter.get_statistics(str(xlsx))
print(f"Elements: {stats['total_elements']}")
print(f"Levels: {stats['levels_used']}")

# 3. Extract for GIS
analyzer = DGNAnalyzer(exporter)
coords = analyzer.extract_coordinates(str(xlsx))
coords.to_csv("for_gis.csv", index=False)
Best Practices
  1. Check version - V7 and V8 have different capabilities
  2. Reference files - Process all reference files separately
  3. Level mapping - Document level standards for your organization
  4. Coordinate systems - Verify units and coordinate systems
  5. Cell libraries - Export cells separately if needed
Resources
  • GitHub: cad2data Pipeline
  • DDC Book: Chapter 2.4 - CAD Data Extraction
  • MicroStation: Infrastructure-focused CAD software
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

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