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Geophysics_Gravity_Gradiometry_Individual_Surveys/Bell_BMC_Txz (ImageServer)

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Service Description: This dataset represents the Txz component of the gravity tensor derived from the Bell BMC2010 FTG/AGG survey in New Brunswick, gridded at 25 m resolution in NAD83 NB Stereographic projection.The dataset contains the Txz tensor component extracted from the reconstructed gravity tensor produced from the Bell BMC2010 FTG data. Txz represents the mixed second derivative of the gravity field in the X–Z directions, making it sensitive to vertical density contrasts and steeply dipping structures. This component is widely used to highlight lithological contacts, major faults, intrusive margins, and zones of strong vertical density gradients. The dataset is provided as a 25 m grid in NAD83 New Brunswick Stereographic projection.This raster was created by processing the original FTG profile data using a density of 2.8 g/cc, reconstructing the full gravity tensor from the measured components, gridding the tensor with a tensor-interpolation algorithm at 25 m resolution, and extracting the Txz component from the resulting tensor grid. It is delivered as an ER Mapper (.ers) raster.Data created Sept 2025.

Name: Geophysics_Gravity_Gradiometry_Individual_Surveys/Bell_BMC_Txz

Description: This dataset represents the Txz component of the gravity tensor derived from the Bell BMC2010 FTG/AGG survey in New Brunswick, gridded at 25 m resolution in NAD83 NB Stereographic projection.The dataset contains the Txz tensor component extracted from the reconstructed gravity tensor produced from the Bell BMC2010 FTG data. Txz represents the mixed second derivative of the gravity field in the X–Z directions, making it sensitive to vertical density contrasts and steeply dipping structures. This component is widely used to highlight lithological contacts, major faults, intrusive margins, and zones of strong vertical density gradients. The dataset is provided as a 25 m grid in NAD83 New Brunswick Stereographic projection.This raster was created by processing the original FTG profile data using a density of 2.8 g/cc, reconstructing the full gravity tensor from the measured components, gridding the tensor with a tensor-interpolation algorithm at 25 m resolution, and extracting the Txz component from the resulting tensor grid. It is delivered as an ER Mapper (.ers) raster.Data created Sept 2025.

Single Fused Map Cache: false

Extent: Initial Extent: Full Extent: Pixel Size X: 25.0

Pixel Size Y: 25.0

Band Count: 1

Pixel Type: F32

RasterFunction Infos: {"rasterFunctionInfos": [{ "name": "None", "description": "", "help": "" }]}

Mensuration Capabilities: Basic

Has Histograms: true

Has Colormap: false

Has Multi Dimensions : false

Rendering Rule:

Min Scale: 0

Max Scale: 0

Copyright Text: NB Dept of Natural Resources, GSB Section

Service Data Type: esriImageServiceDataTypeGeneric

Min Values: -78.018676757812

Max Values: 99.307174682617

Mean Values: 0.17762244947167

Standard Deviation Values: 17.157370776559

Object ID Field:

Fields: None

Default Mosaic Method: Center

Allowed Mosaic Methods:

SortField:

SortValue: null

Mosaic Operator: First

Default Compression Quality: 75

Default Resampling Method: Bilinear

Max Record Count: null

Max Image Height: 4100

Max Image Width: 15000

Max Download Image Count: null

Max Mosaic Image Count: null

Allow Raster Function: true

Allow Compute TiePoints: false

Supports Statistics: false

Supports Advanced Queries: false

Use StandardizedQueries: true

Raster Type Infos: Has Raster Attribute Table: false

Edit Fields Info: null

Ownership Based AccessControl For Rasters: null

Child Resources:   Info   Histograms   Key Properties   Legend   MultiDimensionalInfo   rasterFunctionInfos

Supported Operations:   Export Image   Identify   Measure   Compute Histograms   Compute Statistics Histograms   Get Samples   Compute Class Statistics   Query Boundary   Compute Pixel Location