Ground Motion Models#

The list of GMPEs available in the OpenQuake engine can be found here.

Parametric GMPEs#

Most of the Ground Motion Prediction Equations (GMPEs) in hazardlib are classes that can be instantiated without arguments. However, there is now a growing number of exceptions. Here I will describe some of the parametric GMPEs we have, as well as give some guidance for authors wanting to implement a parametric GMPE.

Signature of a GMPE class#

The more robust way to define parametric GMPEs is to use a **kwargs signature (robust against subclassing):

from openquake.hazardlib.gsim.base import GMPE

class MyGMPE(GMPE):
   def __init__(self, **kwargs):
       super().__init__(**kwargs)
       # doing some initialization here

The call to super().__init__ will set a self.kwargs attribute and perform a few checks, like raising a warning if the GMPE is experimental. In absence of parameters self.kwargs is the empty dictionary, but in general it is non-empty and it can be arbitrarily nested, with only one limitation: it must be a dictionary of literal Python objects so that it admits a TOML representation.

TOML is a simple format similar to the .ini format but hierarchical (see toml-lang/toml). It is used by lots of people in the IT world, not only in Python. The advantage of TOML is that it is a lot more readable than JSON and XML and simpler than YAML: moreover, it is perfect for serializing into text literal Python objects like dictionaries and lists. The serialization feature is essential for the engine since the GMPEs are read from the GMPE logic tree file which is a text file, and because the GMPEs are saved into the datastore as text, in the dataset full_lt/gsim_lt.

The examples below will clarify how it works.

GMPETable#

Historically, the first parametric GMPE was the GMPETable, introduced many years ago to support the Canada model. The GMPETable class has a single parameter, called gmpe_table, which is a (relative) pathname to an .hdf5 file with a fixed format, containing a tabular representation of the GMPE, numeric rather than analytic.

You can find an example of use of GMPETables in the test openquake/qa_tests_data/case_18, which contains three tables in its logic tree:

<logicTreeBranch branchID="b11">
  <uncertaintyModel>
    [GMPETable]
    gmpe_table = "Wcrust_low_rhypo.hdf5"
  </uncertaintyModel>
  <uncertaintyWeight>0.16</uncertaintyWeight>
</logicTreeBranch>
<logicTreeBranch branchID="b12">
  <uncertaintyModel>
    [GMPETable]
    gmpe_table = "Wcrust_med_rhypo.hdf5"
  </uncertaintyModel>
  <uncertaintyWeight>0.68</uncertaintyWeight>
</logicTreeBranch>
<logicTreeBranch branchID="b13">
  <uncertaintyModel>
    [GMPETable]
    gmpe_table = "Wcrust_high_rhypo.hdf5"
  </uncertaintyModel>
  <uncertaintyWeight>0.16</uncertaintyWeight>
</logicTreeBranch>

As you see, the TOML format is used inside the uncertaintyModel tag; the text:

[GMPETable]
gmpe_table = "Wcrust_low_rhypo.hdf5"

is automatically translated into a dictionary {'GMPETable': {'gmpe_table': "Wcrust_low_rhypo.hdf5"}} and the .kwargs dictionary passed to the GMPE class is simply:

{'gmpe_table': "Wcrust_low_rhypo.hdf5"}

NB: you may see around old GMPE logic files using a different syntax, without TOML:

<logicTreeBranch branchID="b11">
   <uncertaintyModel gmpe_table="Wcrust_low_rhypo.hdf5">
      GMPETable
   </uncertaintyModel>
   <uncertaintyWeight>0.16</uncertaintyWeight>
</logicTreeBranch>
   <logicTreeBranch branchID="b12">
   <uncertaintyModel gmpe_table="Wcrust_med_rhypo.hdf5">
      GMPETable
   </uncertaintyModel>
   <uncertaintyWeight>0.68</uncertaintyWeight>
</logicTreeBranch>
   <logicTreeBranch branchID="b13">
   <uncertaintyModel gmpe_table="Wcrust_high_rhypo.hdf5">
      GMPETable
   </uncertaintyModel>
   <uncertaintyWeight>0.16</uncertaintyWeight>
</logicTreeBranch>

This is a legacy syntax, which is still supported and will likely be supported forever, but we recommend to use the new TOML-based syntax, which is more general. The old syntax has the limitation of being non-hierarchic, making it impossible to define MultiGMPEs involving parametric GMPEs: this is why we switched to TOML.

File-dependent GMPEs#

It is possible to define other GMPEs taking one or more filenames as parameters. Everything will work provided you respect the following rules:

  1. there is a naming convention on the file parameters, that must end with the suffix _file or _table

  2. the files must be read at GMPE initialization time (i.e. in the __init__ method)

  3. they must be read with the GMPE.open method, NOT with the open builtin;

  4. in the gsim logic tree file you must use relative path names

The constraint on the argument names makes it possible for the engine to collect all the files required by the GMPEs; moreover, since the path names are relative, the oq zip command can work making it easy to ship runnable calculations. The engine also stores in the datastore a copy of all of the required input files. Without the copy, it would not be possible from the datastore to reconstruct the inputs, thus making it impossible to dump and restore calculations from a server to a different machine.

The constraint about reading at initialization time makes it possible for the engine to work on a cluster. The issue is that GMPEs are instantiated in the controller and used in the worker nodes, which do not have access to the same filesystem. If the files are read after instantiation, you will get a file not found error when running on a cluster.

The reason why you cannot use the standard open builtin to read the files is that the engine must be able to read the GMPE inputs from the datastore copies (think of the case when the calc_XXX.hdf5 has been copied to a different machine). In order to do that, there is some magic based on the naming convention. For instance, if your GMPE must read a text file with argument name text_file you should write the following code:

class GMPEWithTextFile(GMPE):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        with self.open(kwargs['text_file']) as myfile:  # good
            self.text = myfile.read().decode('utf-8')

You should NOT write the following, because it will break the engine, for instance by making it impossible to export the results of a calculation:

class GMPEWithTextFile(GMPE):
    def __init__(self, **kwargs):
        super().__init__(**kwargs)
        with open(kwargs['text_file']) as myfile:  # bad
            self.text = myfile.read()

NB: writing:

class GMPEWithTextFile(GMPE):
    def __init__(self, text_file):
        super().__init__(text_file=text_file)
        with self.open(text_file) as myfile:  # good
            self.text = myfile.read().decode('utf-8')

would work but it is discouraged. It is best to keep the **kwargs signature so that the call to super().__init__(**kwargs) will work out-of-the-box even if in the future subclasses of GMPEWithTextFile with different parameters will appear: this is defensive programming.

MultiGMPE#

Another example of parametric GMPE is the MultiGMPE class. A MultiGMPE is a dictionary of GMPEs, keyed by Intensity Measure Type. It is useful in geotechnical applications and in general in any situation where you have GMPEs depending on the IMTs. You can find an example in our test openquake/qa_tests_data/classical/case_1:

<logicTreeBranch branchID="b1">
   <uncertaintyModel>
     [MultiGMPE."PGA".AkkarBommer2010]
     [MultiGMPE."SA(0.1)".SadighEtAl1997]
   </uncertaintyModel>
   <uncertaintyWeight>1.0</uncertaintyWeight>
 </logicTreeBranch>

Here the engine will use the GMPE AkkarBommer2010 for PGA and SadighEtAl1997 for SA(0.1). The .kwargs passed to the MultiGMPE class will have the form:

{'PGA': {'AkkarBommer2010': {}},
 'SA(0.1)': {'SadighEtAl1997': {}}}

The beauty of the TOML format is that it is hierarchic, so if we wanted to use parametric GMPEs in a MultiGMPE we could. Here is an example using the GMPETable Wcrust_low_rhypo.hdf5 for PGA and Wcrust_med_rhypo.hdf5 for SA(0.1) (the example has no physical meaning, it is just an example):

<logicTreeBranch branchID="b1">
   <uncertaintyModel>
     [MultiGMPE."PGA".GMPETable]
       gmpe_table = "Wcrust_low_rhypo.hdf5"
     [MultiGMPE."SA(0.1)".GMPETable]
       gmpe_table = "Wcrust_med_rhypo.hdf5"
   </uncertaintyModel>
   <uncertaintyWeight>1.0</uncertaintyWeight>
 </logicTreeBranch>

GenericGmpeAvgSA#

In engine 3.4 we introduced a GMPE that manages a range of spectral accelerations and acts in terms of an average spectral acceleration. You can find an example of use in openquake/qa_tests/data/classical/case_34:

<logicTreeBranch branchID="b1">
    <uncertaintyModel>
       [GenericGmpeAvgSA]
       gmpe_name = "BooreAtkinson2008"
       avg_periods = [0.5, 1.0, 2.0]
       corr_func = "baker_jayaram"
    </uncertaintyModel>
    <uncertaintyWeight>1.0</uncertaintyWeight>
</logicTreeBranch>

As you see, the format is quite convenient when there are several arguments of different types: here we have two strings (gmpe_name and corr_func) and a list of floats (avg_periods). The dictionary passed to the underlying class will be:

{'gmpe_name': "BooreAtkinson2008",
 'avg_periods': [0.5, 1.0, 2.0],
 'corr_func': "baker_jayaram"}

ModifiableGMPE#

In engine 3.10 we introduced a ModifiableGMPE class which is able to modify the behavior of an underlying GMPE. Here is an example of use in the logic tree file:

<uncertaintyModel>
    [ModifiableGMPE]
    gmpe.AkkarEtAlRjb2014 = {}
    set_between_epsilon.epsilon_tau = 0.5
</uncertaintyModel>

Here set_between_epsilon is simply shifting the mean with the formula mean -> mean + epsilon_tau * inter_event. In the future ModifiableGMPE will likely grow more methods. If you want to understand how it works you should look at the source code: gem/oq-engine