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WISDEM®

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The Wind-Plant Integrated System Design and Engineering Model (WISDEM®) is a set of models for assessing overall wind plant cost of energy (COE). The models use wind turbine and plant cost and energy production as well as financial models to estimate COE and other wind plant system attributes. WISDEM® is accessed through Python, is built using OpenMDAO, and uses several sub-models that are also implemented within OpenMDAO. These sub-models can be used independently but they are required to use the overall WISDEM® turbine design capability. Please install all of the pre-requisites prior to installing WISDEM® by following the directions below. For additional information about the NWTC effort in systems engineering that supports WISDEM® development, please visit the official NREL systems engineering for wind energy website.

Author: NREL WISDEM Team

Documentation

See local documentation in the docs-directory or access the online version at https://wisdem.readthedocs.io/en/master/

Packages

WISDEM® is a family of modules. The core modules are:

  • CommonSE includes several libraries shared among modules
  • FloatingSE works with the floating platforms
  • DrivetrainSE sizes the drivetrain and generator systems (formerly DriveSE and GeneratorSE)
  • TowerSE is a tool for tower (and monopile) design
  • RotorSE is a tool for rotor design
  • NREL CSM is the regression-based turbine mass, cost, and performance model
  • ORBIT is the process-based balance of systems cost model for offshore plants
  • LandBOSSE is the process-based balance of systems cost model for land-based plants
  • Plant_FinanceSE runs the financial analysis of a wind plant

The core modules draw upon some utility packages, which are typically compiled code with python wrappers:

  • Airfoil Preppy is a tool to handle airfoil polar data
  • CCBlade is the BEM module of WISDEM
  • pyFrame3DD brings libraries to handle various coordinate transformations
  • MoorPy is a quasi-static mooring line model
  • pyOptSparse provides some additional optimization algorithms to OpenMDAO

Installation

Installation with Anaconda is the recommended approach because of the ability to create self-contained environments suitable for testing and analysis. WISDEM® requires Anaconda 64-bit. However, the conda command has begun to show its age and we now recommend the one-for-one replacement with the Miniforge3 distribution, which is much more lightweight and more easily solves for the WISDEM package dependencies.

Installation as a "library"

To use WISDEM's modules as a library for incorporation into other scripts or tools, WISDEM is available via conda install wisdem or pip install wisdem, assuming that you have already setup your python environment. Note that on Windows platforms, we suggest using conda exclusively.

Installation for direct use

These instructions are for interaction with WISDEM directly, the use of its examples, and the direct inspection of its source code.

The installation instructions below use the environment name, "wisdem-env," but any name is acceptable. For those working behind company firewalls, you may have to change the conda authentication with conda config --set ssl_verify no. Proxy servers can also be set with conda config --set proxy_servers.http http://id:pw@address:port and conda config --set proxy_servers.https https://id:pw@address:port. To setup an environment based on a different Github branch of WISDEM, simply substitute the branch name for master in the setup line.

  1. Setup and activate the Anaconda environment from a prompt (Anaconda3 Power Shell on Windows or Terminal.app on Mac)

    conda config --add channels conda-forge
    conda install git
    git clone https://github.com/WISDEM/WISDEM.git
    cd WISDEM
    conda env create --name wisdem-env -f environment.yml
    conda activate wisdem-env
    
  2. In order to directly use the examples in the repository and peek at the code when necessary, we recommend all users install WISDEM in developer / editable mode using the instructions here. If you really just want to use WISDEM as a library and lean on the documentation, you can always do conda install wisdem and be done. Note the differences between Windows and Mac/Linux build systems. For Linux, we recommend using the native compilers (for example, gcc and gfortran in the default GNU suite).

    conda install -y petsc4py mpi4py                 # (Mac / Linux only)
    conda install -y gfortran                        # (Mac only without Homebrew or Macports compilers)
    conda install -y m2w64-toolchain libpython       # (Windows only)
    pip install --no-deps -e . -v
    

NOTE: To use WISDEM again after installation is complete, you will always need to activate the conda environment first with conda activate wisdem-env

For Windows users, we recommend installing git and the m2w64 packages in separate environments as some of the libraries appear to conflict such that WISDEM cannot be successfully built from source. The git package is best installed in the base environment.

Run Unit Tests

Each package has its own set of unit tests. These can be run in batch with the test_all.py script located in the top level test-directory.

Feedback

For software issues please use https://github.com/WISDEM/WISDEM/issues. For functionality and theory related questions and comments please use the NWTC forum for Systems Engineering Software Questions.

pyhams's People

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pyhams's Issues

Support for specific wave headings

There are use cases where it could be nice to do a HAMS analysis for specific wave headings that are not evenly distributed. For example, calculating excitation coefficients at -10, 0, 10, 80, 90, 100 degree headings, while skipping other headings for efficiency.

The HAMS input file format (e.g. https://github.com/YingyiLiu/HAMS/blob/master/CertTest/Moonpool/Input/ControlFile.in) seems to support this, similar to WAMIT.

Could we adjust the pyHAMS write_control_file function to also allow this approach of specifying specific headings?

I'd be happy to look into what would need changing (in https://github.com/WISDEM/pyHAMS/blob/main/pyhams/pyhams.py), but wanted to ask what others think first.

Seeking a way to install for development

Would @gbarter or anyone have advice for how to install the latest version of PyHAMS in develop mode (on Windows)?

After updating my PyHAMS folder from a very old version, I wasn't able to install from the folder.
Python install.py doesn't existing anymore and pip install can't find dependencies (meson build log pasted below). So far the installation method that's worked for me is "conda install -c conda-forge pyhams", but that's not from a local directory I can then edit.

I don't need to do anything with the compiled HAMS code. I just want to be able to work on the the pyhams.py functions. Any tips much appreciated.
Matt

Meson setup.py log from when I try "pip install -e .":

The Meson build system
Version: 1.2.3
Source dir: C:\Code\pyHAMS
Build dir: C:\Code\pyHAMS\meson_build
Build type: native build
Project name: pyhams
Project version: undefined
C compiler for the host machine: gcc (gcc 5.3.0 "gcc (Rev5, Built by MSYS2 project) 5.3.0")
C linker for the host machine: gcc ld.bfd 2.25.1
Host machine cpu family: x86_64
Host machine cpu: x86_64
Fortran compiler for the host machine: gfortran (gcc 5.3.0 "GNU Fortran (Rev5, Built by MSYS2 project) 5.3.0")
Fortran linker for the host machine: gfortran ld.bfd 2.25.1
Library m found: YES
Compiler for Fortran supports arguments -fdec-math: NO 
Compiler for Fortran supports arguments -fno-align-commons: YES 
Run-time dependency OpenMP found: YES 4.0
Found pkg-config: C:\Users\mhall\Anaconda3\envs\raft\Library\mingw-w64\bin\pkg-config.EXE (0.29.1)
Did not find CMake 'cmake'
Found CMake: NO
Run-time dependency mkl_rt found: NO (tried pkgconfig and cmake)
Run-time dependency openblas found: NO (tried pkgconfig and cmake)
Run-time dependency blas found: NO (tried pkgconfig and cmake)
Run-time dependency lapack found: NO (tried pkgconfig)

meson.build:57:9: ERROR: Dependency "lapack" not found, tried pkgconfig

A full log can be found at C:\Code\pyHAMS\meson_build\meson-logs\meson-log.txt

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