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1879 lines (1879 loc) · 160 KB
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<?xml version="1.0"?>
<metadata xml:lang="en"><Esri><CreaDate>20241121</CreaDate><CreaTime>14182300</CreaTime><ArcGISFormat>1.0</ArcGISFormat><SyncOnce>TRUE</SyncOnce><ModDate>20260616</ModDate><ModTime>11363600</ModTime><scaleRange><minScale>150000000</minScale><maxScale>5000</maxScale></scaleRange><ArcGISProfile>ItemDescription</ArcGISProfile></Esri><tool name="ContourBH_Tool" displayname="Contour Tool Bathymetric High" toolboxalias="BathymetricHigh" xmlns=""><arcToolboxHelpPath>c:\program files\arcgis\pro\Resources\Help\gp</arcToolboxHelpPath><parameters><param name="bathyRas" displayname="Input Bathymetry Raster" type="Required" direction="Input" datatype="Raster Layer" expression="bathyRas"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the input bathymetry raster.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="outContour" displayname="Output Contour Featureclass" type="Required" direction="Output" datatype="Feature Class" expression="outContour"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the output feature class delineates the bathymetric contours.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="outFeat" displayname="Output Bathymetric High Featureclass" type="Required" direction="Output" datatype="Feature Class" expression="outFeat"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This is the output feature class delineates the bathymetric high features.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="sDepth" displayname="Shallowest Contour Depth" type="Required" direction="Input" datatype="Double" expression="sDepth"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The shallowest contour depth value for the mapping. The value must be negative or zero.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="dDepth" displayname="Deepest Contour Depth" type="Required" direction="Input" datatype="Double" expression="dDepth"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The deepest contour depth value for the mapping. The value must be negative.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="cInterval" displayname="Contour interval" type="Required" direction="Input" datatype="Double" expression="cInterval"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The interval between contour lines. The value must be positive.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="depthFactor" displayname="Depth Difference" type="Required" direction="Input" datatype="Double" expression="depthFactor"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">This parameter, together with the "Depth Difference Calculation Method" parameter, is used to calculate the "Depth Difference" threshold. If the "Depth Difference Calculation Method" is "As Absolute Depth Value (m)", enter a positive depth value to represent the "Depth Difference" threshold. If the "Depth Difference Calculation Method" is "As Percentage of the Contour Value (%)", enter a positive percentage value. If for example, a value of 5 is entered, the "Depth Difference" threshold is calculated as abs(5% * the contour value). </SPAN></P><P><SPAN /></P></DIV></DIV></DIV></dialogReference></param><param name="depthMethod" displayname="Depth Difference Calculation Method" type="Required" direction="Input" datatype="String" expression="As Absolute Depth Value (m) | As Percentage of the Contour Value (%)"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">Select one of the two methods from the drop-down list to calculate the "Depth Difference" threshold.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="minAreaThreshold" displayname="Minimum Area Threshold" type="Required" direction="Input" datatype="Areal Unit" expression="minAreaThreshold"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The minimum threshold of polygon area. All resulted bathymetric high feature polygons should have areas greater than this threshold.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="maxAreaThreshold" displayname="Maximum Area Threshold" type="Required" direction="Input" datatype="Areal Unit" expression="maxAreaThreshold"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">The maximum threshold of polygon area. All resulted bathymetric high feature polygons should have areas smaller than this threshold.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="method" displayname="Mapping Method" type="Required" direction="Input" datatype="String" expression="First Derivative | Second Derivative"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">Select one of the two mapping algorithms from the drop-down list.</SPAN></P></DIV></DIV></DIV></dialogReference></param><param name="maxCPU" displayname="Maximum number of CPU processors used for multiprocessing" type="Required" direction="Input" datatype="Long" expression="maxCPU"><dialogReference><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN STYLE="font-weight:bold;">Enter </SPAN><SPAN STYLE="font-weight:bold;">the </SPAN><SPAN STYLE="font-weight:bold;">maximum </SPAN><SPAN STYLE="font-weight:bold;">number of CPU processors used for multiprocessing.</SPAN><SPAN STYLE="font-weight:bold;"> The default is the half of the available CPU processors</SPAN><SPAN STYLE="font-weight:bold;"> minus 1</SPAN><SPAN STYLE="font-weight:bold;">.</SPAN></P></DIV></DIV></DIV></dialogReference></param></parameters><summary><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>This tool uses a contour based method to map bathymetric high features from bathymetry data. </SPAN><SPAN>A bathymetric high feature is topographically above</SPAN><SPAN> (or higher than)</SPAN><SPAN> an enclosed contour. </SPAN><SPAN>Because each bathymetric high feature may be intercepted or enclosed by multiple contours, the objective of the mapping is to identify the most likely enclosed contour as the boundary of the bathymetric high feature.</SPAN></P><P><SPAN /></P><P><SPAN>The followings are the key </SPAN><SPAN>mapping </SPAN><SPAN>steps:</SPAN></P><OL><LI><P><SPAN>D</SPAN><SPAN>etermine the depth range </SPAN><SPAN>(and thus the </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">"</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Shallowest Contour Depth</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">"</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;"> </SPAN><SPAN>and the </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">"</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Deepest Contour Depth</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">"</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;"> </SPAN><SPAN>parameters)</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;"> </SPAN><SPAN>within which the targeted bathymetric high features are located. </SPAN></P></LI><LI><P><SPAN>Generate the</SPAN><SPAN> "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Output Contour Featureclass</SPAN><SPAN>"</SPAN><SPAN> using the</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;"> "Contour interval</SPAN><SPAN>" and the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Shallowest Contour Depth</SPAN><SPAN>" parameters.</SPAN></P></LI><LI><P><SPAN>Loop through each contour depth from the shallowest to the deepest and do the followings:</SPAN></P><UL><LI><P><SPAN>convert the </SPAN><SPAN>enclosed </SPAN><SPAN>contours at the selected </SPAN><SPAN>contour </SPAN><SPAN>depth to polygons</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>select only those contour polygons with their areas greater than the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Minimum </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Area Threshold</SPAN><SPAN>" parameter</SPAN><SPAN> but smaller than the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Maximum Area Threshold</SPAN><SPAN>" parameter,</SPAN></P></LI><LI><P><SPAN>eliminate all holes in the selected contour polygons</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>calculate the mean depth of the selected contour polygons</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>for each </SPAN><SPAN>contour </SPAN><SPAN>polygon, calculate the depth difference between its mean depth and the contour value</SPAN><SPAN>, and</SPAN></P></LI><LI><P><SPAN>further select only those </SPAN><SPAN>contour </SPAN><SPAN>polygons that have positive depth difference greater than </SPAN><SPAN>a</SPAN><SPAN> threshold</SPAN><SPAN> (calculated by the combination of the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Depth Difference</SPAN><SPAN>" parameter and the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Depth Difference Calculation Method</SPAN><SPAN>" parameter</SPAN><SPAN>)</SPAN><SPAN>.</SPAN></P></LI></UL></LI><LI><P><SPAN>Merge all of the selected </SPAN><SPAN>contour </SPAN><SPAN>polygons from all of the contour depths. </SPAN><SPAN>Note that o</SPAN><SPAN>ne bathymetric </SPAN><SPAN>high </SPAN><SPAN>feature may be intercepted or enclosed by one </SPAN><SPAN>or </SPAN><SPAN>multiple of these merged polygons.</SPAN></P></LI><LI><P><SPAN>Determine how many contour(s) intercept or enclose each bathymetric</SPAN><SPAN> high</SPAN><SPAN> feature.</SPAN></P></LI><LI><P><SPAN>If a bathymetric high feature is enclosed by only one </SPAN><SPAN>contour </SPAN><SPAN>polygon, select the</SPAN><SPAN> contour</SPAN><SPAN> polygon as the boundary of the bathymetric high feature.</SPAN></P></LI><LI><P><SPAN>If a bathymetric high feature is intercepted or enclosed by two </SPAN><SPAN>contour </SPAN><SPAN>polygons, selected the</SPAN><SPAN> contour</SPAN><SPAN> polygon with a deeper contour as the boundary of the bathymetric high feature.</SPAN></P></LI><LI><P><SPAN>If a bathymetric high feature is intercepted or enclosed by three or more </SPAN><SPAN>contour </SPAN><SPAN>polygons, the following </SPAN><SPAN>procedures </SPAN><SPAN>are used to determine the most likely </SPAN><SPAN> contour polygon as the </SPAN><SPAN>boundary of the bathymetric high feature:</SPAN></P><UL><LI><P><SPAN>generate a table with two columns: contour </SPAN><SPAN>value </SPAN><SPAN>and polygon area, each row lists the corresponding values of one intercepted or enclosed contour</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>sort the rows using the contour values in</SPAN><SPAN> a</SPAN><SPAN> descending order (e.g., -40m, -50m and -60m, from </SPAN><SPAN>the </SPAN><SPAN>shallowest to </SPAN><SPAN>the </SPAN><SPAN>deepest)</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>if the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Mapping Method</SPAN><SPAN>" </SPAN><SPAN>parameter </SPAN><SPAN>is "First Derivative", for each consecutive pair of neighbouring contour polygons (e.g., -40m and -50m, then -50m and -60m), calculate the first derivative (or slope) of the polygon area between two neighbouring contour polygons</SPAN><SPAN>, and then</SPAN></P><UL><LI><P><SPAN>identify the index location of the maximum first derivative</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>use the index location to split the contour values into two subsets</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>select the subset with a higher number of elements (if two subsets have an identical number of elements, select the subset with deeper contour values)</SPAN><SPAN>, and</SPAN></P></LI><LI><P><SPAN>select the deepest contour within the selected subset as the boundary of the bathymetric high feature</SPAN><SPAN>;</SPAN></P></LI></UL></LI><LI><P><SPAN>if the "</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">Mapping Method</SPAN><SPAN>" </SPAN><SPAN>parameter </SPAN><SPAN>is "Second Derivative", for each consecutive pair of neighbouring contour polygons (e.g., -40m and -50m, then -50m and -60m), calculate the first derivative (or slope) of the polygon area between two neighbouring contour polygons, then calculate the second derivative (or slope of slope) of the polygon area between two neighbouring contour polygons</SPAN><SPAN>, and then</SPAN></P><UL><LI><P><SPAN>identify the index location of the maximum second derivative</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>use the index location to split the contour values into two subsets</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>select the subset with shallower contour values</SPAN><SPAN>,</SPAN></P></LI><LI><P><SPAN>select the deepest contour within the selected subset as the boundary of the bathymetric high feature</SPAN><SPAN>, and</SPAN></P></LI><LI><P><SPAN>note that if there are only three contours intercepting or enclosing the bathymetric high features, there is only one second derivative value, in this case, select the second deepest contour as the boundary of the bathymetric high feature.</SPAN></P></LI></UL></LI></UL></LI><LI><P><SPAN>Loop through each bathymetric high feature, then merge all selected contour polygons from the merged </SPAN><SPAN>contour </SPAN><SPAN>polygons as the final </SPAN><SPAN>"</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">O</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">utput </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">B</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">athymetric </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">H</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">igh </SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">F</SPAN><SPAN STYLE="font-style:italic;font-weight:bold;">eatureclass</SPAN><SPAN>"</SPAN><SPAN>.</SPAN></P></LI></OL><P><SPAN>Note that the multiprocessing capability is used to speed up the processes described in the step 8 above. </SPAN></P><P><SPAN>The Contour interval value should be proportional to the vertical relief of the bathymetric high features to be mapped in the dataset. For example, using a large Contour interval value is not able to map seabed features of low vertical relief. The Maximum Area Threshold and the Minimum Area Threshold values determine the size of the seabed features to be mapped. Users should also experiment with different Depth difference and Mapping Method parameters to obtain optimal mapping results.</SPAN></P><P><SPAN /></P></DIV></DIV></DIV></summary><scriptExamples><scriptExample><para><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>This tool can not be called from Python script or Python comman</SPAN><SPAN>d</SPAN><SPAN> line window.</SPAN></P></DIV></DIV></DIV></para></scriptExample></scriptExamples></tool><dataIdInfo><idCitation><resTitle>Contour Tool Bathymetric High</resTitle></idCitation><idCredit>(c) Commonwealth of Australia (Geoscience Australia) 2026</idCredit><searchKeys><keyword>This tool maps bathymetric high features from a bathymetric data using a Contour based method.</keyword></searchKeys><resConst><Consts><useLimit><DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>Creative Commons Attribution 4.0 International Licence</SPAN></P></DIV></DIV></DIV></useLimit></Consts></resConst></dataIdInfo><distInfo><distributor><distorFormat><formatName>ArcToolbox Tool</formatName></distorFormat></distributor></distInfo><mdHrLv><ScopeCd value="005"/></mdHrLv><mdDateSt Sync="TRUE">20260616</mdDateSt><Binary><Thumbnail><Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAYABgAAD/4SeORXhpZgAATU0AKgAAAAgABgALAAIAAAAmAAAIYgESAAMA
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