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SparkRocks - Parallel rock slicing implementation on Apache Spark

Cambridge Berkeley - Geomechanics

License Scaladoc Build Status DOI

Please post any general questions about using the code to the DEM Forum

Overview

SparkRocks is a parallel fractured rock mass generator that runs on Apache Spark. The block cutting algorithm is based on a subdivision approach and linear programming optimization as described in A new rock slicing method based on linear programming by Boon et al. (2015). It can be run both locally or on the cloud and on any operating system. A complete description of the parallel block cutting implementation within SparkRocks is given in Parallel and scalable block system generation by Gardner et al. (2017).

Usage

Before running SparkRocks, Apache Spark needs to be installed on your system. Apache Spark can be downloaded from here. Once Apache Spark is installed, SparkRocks is run by submitting sparkrocks-assembly-1.0.jar to Spark. Spark manages the execution and deployment of SparkRocks so the user does not need to do any additional work to scale analyses to larger scale problems. Documentation on how to deploy Spark locally or on the cloud is provided at Submitting Applications. The examples that follow assume SparkRocks is being run on Amazon EMR.

Command line arguments

SparkRocks is run from the command line using only a few, straightforward arguments as follows:

spark-submit path/to/sparkRocks-assembly-1.0.jar [required inputs] [optional inputs]
  • Required inputs:

-i <path/to/input/file>

This provides the path the input file that is described below

-n <integer number of partitions>

Number of partitions to divide the input rock volume into before initiating parallel computations.

One or both of: --vtkOut <path/to/output> --jsonOut <path/to/output>

These flags specify which outputs are desired and the directory where to save them. SparkRocks can output either in JSON or an intermediate format that is easily converted to VTK using VisualRocks.

  • Optional inputs:

--minRadius <value>

Minimum inscribed radius of blocks that should be generated

--maxAspectRatio <value>

Maximum aspect ratio of blocks that should be generated

-f

Flag to force analysis to continue if specified number of partitions is not found

--help

Prints usage text

Input

The required inputs are kept as simple as possible. The global origin for the block generation needs to be specified as well as a bounding box. The bounding box is simply a rectangular prism that bounds the entire rock volume that is to be subdivided into blocks. It is specified by two vertices delineating its maximum extents. The input rock volume and the joint sets that will cut also need to be provided. The rock volume is described by the faces that bound it. These are specified by providing the strike and dip for each face as well as a point located in the face.

The beginning of the joint input data is indicated by an empty line. The joint sets are specified by their strike, dip, persistence and spacing as well as the friction angle and cohesion associated with the joint set. Presently, the JointGenerator is only able to generate persistent joints so the persistence input should be given as 100.0. Given these parameters, a full set of joints is generated within the bounds delineated by the bounding box. This set of joints is then used to cut the blocks in the input rock volume.

The following is a simple example of what an input file should look like. (Note: the comments in parentheses are not part of the actual input file and are only included for clarity):

0.0 0.0 0.0 (Global Origin)
-2.0 -2.0 -2.0 (Minimum Extent) 2.0 2.0 2.0 (Maximum Extent)
0.0 90.0 0.0 -1.0 0.0 30.0 0.0 (Bounding face, strike of 0 and dip of 90 degrees)
0.0 90.0 0.0 1.0.0 0.0 30.0 0.0 (Bounding face, strike of 0 and dip of 90 degrees)
90.0 90.0 -1.0 0.0 0.0 30.0 0.0 (Bounding face, strike of 90 and dip of 90 degrees)
90.0 90.0 1.0 0.0 0.0 30.0 0.0 (Bounding face, strike of 90 and dip of 90 degrees)
0.0 0.0 0.0 0.0 -1.0 30.0 0.0 (Bounding face, strike of 0 and dip of 0 degrees)
0.0 0.0 0.0 0.0 1.0 30.0 0.0 (Bounding face, strike of 0 and dip of 0 degrees)
(This line should be left blank to show transition to joint input data)
34.0 23.0 1.0 100.0 30.0 0.0 (First joint set, strike of 34 and dip of 23 degrees, spacing of 1.0m)
192.0 47.0 0.7 100.0 30.0 0.0 (Second joint set, strike of 192 and dip of 47 degrees, spacing of 0.7m)
321.0 62.0 0.4 100.0 30.0 0.0 (Third joint set, strike of 321 and dip of 62 degrees, spacing of 0.4m)

For the faces that bound the volume, notice that the point located within the face is specified after the dip, followed by the friction angle and cohesion. Notice that for all faces and joints, the friction angle and cohesion are specified as 30.0 degrees and 0.0 force/area. As mentioned previously, all joints are specified as 100% persistent.

Output

Currently, SparkRocks exports the generated rock mass in two formats. The first is JavaScript Object Notation (JSON), which is a simple and standard means of encoding data and is commonly used to exchange data between soft- ware applications over the web. JSON was chosen because it is widely used and is supported in most programming languages. This makes it easy for other soft- ware tools, like DEM simulators, to use the 3D model generated by SparkRocks. The 3D model can also be exported in the more specialized Visualization Toolkit (VTK) format. This enables visualization in tools such as ParaView (which, like SparkRocks, is open source and free to use). It is important to note that SparkRocks is not limited to these two formats, as the system is modular in design. Augmenting the software to export blocks in new format involves writing code that essentially amounts to defining a single function that converts a collection of blocks into the necessary form.

When generating VTK format, it is necessary to process the output files with VisualRocks. This is a simple Python script that converts the generated outputs into .vtp format so that it can be directly imported into ParaView.

Future Work

The current version of SparkRocks generates a fractured rock mass for persistent joints; however, non-persistent joints are a common occurrence in natural rock. Future work should include a stochastic joint generator that can capture the variation in strike, dip, spacing and persistence of joint sets. The inter- section code currently implemented in SparkRocks is able to account for the non-persistence of joints, but the code that generates the joint sets should be expanded to produce stochastic realizations such that natural variability in the rock mass can be considered.

Acknowledgments

This research was supported in part by the National Science Foundation (NSF) grant CMMI-1363354 and the Edward G. Cahill and John R. Cahill Endowed Chair funds.