The goal of this effort was to assess if we could use spatial statistical tools provided within ArcGIS 10.1 to evaluate geospatial relationships to differentiate between natural subsurface leakage pathways and anthropogenic leakage pathways. Evidence for gas migration within the subsurface is well documented through petroleum system and CO2 sequestration related studies. In addition, there are a number of examples of paleo- and modern natural gas seepage from deep subsurface systems to the near-surface in both onshore and offshore environments. Gas/fluid migration are key to the documentation of fluid flux relative to both resource/storage potential estimates and improving constraints on potential environmental impacts associated with gas migration from subsurface to groundwater systems and the atmosphere. Migration of gas from subsurface systems is particularly visible in the marine environment where gas plumes into the water column have been observed and studied by a number of researchers worldwide.
Migration of gas from subsurface systems to near surface systems has been the target of relatively few investigations, although a better understanding of these processes is of increasing interest due to the focus on potential storage of CO2 in geologic media and on methane recovery using hydrofracking techniques. To date, many of the studies evaluating the flux and migration of gas from subsurface to near surface systems have focused on anthropogenic concerns such as potential leakage related to CO2 storage, landfills, and natural gas storage facilities. Given the variability of the natural geologic system and the limited amount of existing field data and studies examining these systems, questions about the timing and nature of gas migration in many regions persist. Evaluating available data to assess whether interactions between subsurface and near-surface systems are related to naturally occurring mechanisms or are the result of anthropogenic activities offers additional challenges. However, improving understanding of mid to large-scale, field- and regional-scale controls on gas flux will help further constrain the relationships between geologic media, and the nature and timing of gas flux in a variety of subsurface systems. Through the evaluation of field datasets utilizing laboratory, geospatial and geostatistical analytical methods patterns related to gas occurrences and concentrations in subsurface systems can be identified.

simplified box model 4 2013

To support these evaluations in a test scenario for CO2 geologic storage potential in the Appalachian Basin’s Oriskany formation, we utilized geostatistical tools to assess a variety of parameters associated with the reservoir characterization of the Oriskany formation including thickness, porosity, subsurface depth to top of formation, pressure, temperature, and a variety of pore-filling media relationships such as brine density, salinity, etc. The data leveraged for this analysis was largely based upon borehole geophysical log interpretations from West Virginia, Ohio, and Pennsylvania. The distribution of these data were irregular, and not every data point had values for all the reservoir parameters being evaluated. The variability of the wellbore data points is highlighted in the figure below.

map

To fill in the gaps for areas of low data density or even no data density to develop a complete dataset with values for all parameters to assist with CO2 storage estimations, each parameters needs to have a value (at least a minimum, maximum, and average value) for all parameters. As a result, the following tools and approaches were evaluated within ArcGIS for this dataset:
1. Use the min, max, and average values for the entire dataset and assign those values to all empty grids
2. Inverse Distance Weighting (IDW) evaluated to fill in the empty grids
3. Kriging also evaluated as a tool to fill in the empty grids
Example of these results for porosity data:

porosity

trends

The graph above shows the relative distribution and compares average % porosity values for the raw data points against interpolated values using ArcGIS’ kriging versus inverse distance weighting (IDW) approaches. While offering generally similar results, the IDW approach for this dataset appears to interpolate and fill in data gaps in a manner that more closely follows the trends of the actual average porosity data versus that of the kriging interpolation algorithm.
Summary and preliminary conclusions:
1. Recommend using IDW interpolations to fill gaps
a. Best fit to original well data for parameters
b. Represent natural fluctuations in data range
c. Correlates parameters across spatial distances
2. Intent to represent “field-” to basin-scale features and variability not reservoir/borehole scale features.
3. Help inform technology development, risk evaluation, knowledge gaps
4. For extrapolation to more complex systems and problems dealing with 3D, multi-system components:
a. Basic geostatistical tools are sufficient for preliminary analyses and filling in gaps
b. But more complex analyses will require other software/approaches

3D

In the geological sciences spatial statistical analysis of gas distribution and migration thru subsurface systems has been applied in a limited number of studies across a variety of systems, CO2 storage, hydrocarbon exploration, landfills, and natural gas storage facilities on a fairly limited basis.  My study seeks to evaluate the source and mechanism of potential contaminates in groundwater systems affiliated with engineered-subsurface resource activities (e.g. hydrocarbon development, CO2 storage, EGS stimulation) using currently available datasets.

Specifically, this project seeks to apply geostatistical techniques in combination with spatial analysis of key datasets from a single geologic basin to evaluate the source and mechanism of gas and other potential contaminants in groundwater systems.  This project hypothesizes that larger-scale patterns in shallow methane concentrations in groundwater aquifers can be correlated to both primary migration pathways (such as wellbores or fracture networks) and the underlying volume of in situ hydrocarbon.  The general approach to this study is to identify, standardize, and integrate preexisting data from the study basin for use in geostatistical, relational, and probabilistic evaluation and interpretation.

The box model diagram below conceptually simplifies the primary systems interacting in the subsurface.  Datasets key to characterizing the flux of gas in and out of these systems, i) sources, ii) pathways, and iii) receptors, will require spatial characterization and statistical analysis in order to support predictions of areas of likely high-flux to receptors versus low-flux to receptors in relation to both natural and anthropogenic processes.

simplified box model 4 2013

The class reviewed the content of ESRI’s ArcGIS spatial statistics blog and reported on areas of interest and potential future use from each student’s perspective.  With regards to statistical predictions involving three dimensional problems spanning the subsurface, groundwater, surface and atmospheric systems, one challenge is how to use ArcGIS statistics to evaluate the connectivity and interaction of these systems to predict or estimate relationships between them.

ArcMarine has a 3-D component but is still under development and does not directly address the issues of spatial statistical analyses of 3D systems.

Jen’s identification of the spatial statistics in ArcGIS handbook was interesting and may be useful for identifying tools and analyses that are appropriate.

Peggy’s identification of the externally developed tool for statistically evaluating flow through networks (rivers and streams) may also be useful.  See her post for link to this tool.

Dori’s discussion on identification of generating network spatial weights is also relevant to our approach and something Jen and I have utilized previously for our research.

Finally, evaluating further the tools available in the “Assess Overall Spatial Patterns” and the “Model Relationships” portion of the ArcGIS blog also look prospective and worthy of further investigation.