Tools for performing common tasks on solar PV data signals
Project description
solar-data-tools
Tools for performing common tasks on solar PV data signals. These tasks include finding clear days in a data set, common data transforms, and fixing time stamp issues. These tools are designed to be automatic and require little if any input from the user. Libraries are included to help with data IO and plotting as well.
There is close integration between this repository and the Statistical Clear Sky repository, which provides a "clear sky model" of system output, given only measured power as an input.
See notebooks folder for examples.
Setup
Recommended: Set up conda
environment with provided .yml
file
Updated March 2021
We recommend setting up a fresh Python virtual environment in which to use solar-data-tools
. We recommend using the Conda package management system, and creating an environment with the environment configuration file named pvi-user.yml
, provided in the top level of this repository. This will install the statistical-clear-sky
package as well.
Additional documentation on setting up the Conda environment is available here.
Please see the Conda documentation page, "Creating an environment from an environment.yml file" for more information.
Installing this project as PIP package
$ pip install solar-data-tools
As of March 6, 2019, it fails because scs package installed as a dependency of cxvpy expects numpy to be already installed. scs issue 85 says, it is fixed. However, it doesn't seem to be reflected in its pip package. Also, cvxpy doesn't work with numpy version less than 1.16. As a work around, install numpy separatly first and then install this package. i.e.
$ pip install 'numpy>=1.16'
$ pip install statistical-clear-sky
Solvers
Currently, this sofware package requires the use of a commercial software package called MOSEK. The included YAML file will install MOSEK for you, but you will still need to obtain a license. More information is available here:
- mosekstall -f https://download.mosek.com/stable/wheel/index.html Mosek
Installing this project as Anaconda package
$ conda install -c slacgismo solar-data-tools
If you are using Anaconda, the problem described in the section for PIP package above doesn't occur since numpy is already installed. And during solar-data-tools installation, numpy is upgraded above 1.16.
Solvers
By default, ECOS solver is used, which is supported by cvxpy because it is Open Source.
However, it is found that Mosek solver is more stable. Thus, we encourage you to install it separately as below and obtain the license on your own.
Using this project by cloning this GIT repository
From a fresh python
environment, run the following from the base project folder:
$ pip install -r requirements.txt
Usage
Users will primarily interact with this software through the DataHandler
class.
from solardatatools import DataHandler
from solardatatools.dataio import get_pvdaq_data
pv_system_data = get_pvdaq_data(sysid=35, api_key='DEMO_KEY', year=[2011, 2012, 2013])
dh = DataHandler(pv_system_data)
dh.run_pipeline(power_col='dc_power')
If everything is working correctly, you should see something like the following
total time: 16.67 seconds
--------------------------------
Breakdown
--------------------------------
Preprocessing 6.52s
Cleaning 8.62s
Filtering/Summarizing 1.53s
Data quality 0.23s
Clear day detect 0.19s
Clipping detect 0.21s
Capacity change detect 0.91s
Versioning
We use Semantic Versioning for versioning. For the versions available, see the tags on this repository.
Authors
- Bennet Meyers - Initial work and Main research work - Bennet Meyers GitHub
See also the list of contributors who participated in this project.
License
This project is licensed under the BSD 2-Clause License - see the LICENSE file for details
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for solar_data_tools-0.4.7-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 76f5d25572cce59b42db0315fbb8b015a2ef2ba83cb9e460dea1ef5262604ec0 |
|
MD5 | 3f05fa3eb47b4a8ad43e1ac287413fa1 |
|
BLAKE2b-256 | 0770c33e02dbdd5c2616151f7c09a16ede36310b233dfd5a82ed7d44d763a28c |