Example #1
0
def get_vulnerability_functions(fname):
    """
    :param fname:
        path of the vulnerability filter
    :returns:
        a dictionary imt, taxonomy -> vulnerability function
    """
    # NB: the vulnerabilitySetID is not an unique ID!
    # it is right to have several vulnerability sets with the same ID
    # the IMTs can also be duplicated and with different levels, each
    # vulnerability function in a set will get its own levels
    imts = set()
    taxonomies = set()
    vf_dict = {}  # imt, taxonomy -> vulnerability function
    node = nrml.read(fname)
    if node['xmlns'] == 'http://openquake.org/xmlns/nrml/0.5':
        vmodel = node[0]
        for vfun in vmodel[1:]:  # the first node is the description
            imt = vfun.imls['imt']
            imls = numpy.array(~vfun.imls)
            taxonomy = vfun['id']
            loss_ratios, probs = [], []
            for probabilities in vfun[1:]:
                loss_ratios.append(probabilities['lr'])
                probs.append(valid.probabilities(~probabilities))
            probs = numpy.array(probs)
            assert probs.shape == (len(loss_ratios), len(imls))
            vf_dict[imt, taxonomy] = scientific.VulnerabilityFunctionWithPMF(
                taxonomy, imt, imls, numpy.array(loss_ratios), probs)
        return vf_dict
    # otherwise, read the old format (NRML 0.4)
    for vset in read_nodes(fname, filter_vset,
                           nodefactory['vulnerabilityModel']):
        imt_str, imls, min_iml, max_iml, imlUnit = ~vset.IML
        imts.add(imt_str)
        for vfun in vset.getnodes('discreteVulnerability'):
            taxonomy = vfun['vulnerabilityFunctionID']
            if taxonomy in taxonomies:
                raise InvalidFile(
                    'Duplicated vulnerabilityFunctionID: %s: %s, line %d' %
                    (taxonomy, fname, vfun.lineno))
            taxonomies.add(taxonomy)
            with context(fname, vfun):
                loss_ratios = ~vfun.lossRatio
                coefficients = ~vfun.coefficientsVariation
            if len(loss_ratios) != len(imls):
                raise InvalidFile(
                    'There are %d loss ratios, but %d imls: %s, line %d' %
                    (len(loss_ratios), len(imls), fname,
                     vfun.lossRatio.lineno))
            if len(coefficients) != len(imls):
                raise InvalidFile(
                    'There are %d coefficients, but %d imls: %s, line %d' %
                    (len(coefficients), len(imls), fname,
                     vfun.coefficientsVariation.lineno))
            with context(fname, vfun):
                vf_dict[imt_str, taxonomy] = scientific.VulnerabilityFunction(
                    taxonomy, imt_str, imls, loss_ratios, coefficients,
                    vfun['probabilisticDistribution'])
    return vf_dict
Example #2
0
def ffconvert(fname, limit_states, ff):
    """
    Convert a fragility function into a numpy array plus a bunch
    of attributes.

    :param fname: path to the fragility model file
    :param limit_states: expected limit states
    :param ff: fragility function node
    :returns: a pair (array, dictionary)
    """
    with context(fname, ff):
        ffs = ff[1:]
        imls = ff.imls
    with context(fname, imls):
        attrs = dict(format=ff['format'],
                     imt=imls['imt'],
                     nodamage=imls.attrib.get('noDamageLimit'))

    LS = len(limit_states)
    if LS != len(ffs):
        with context(fname, ff):
            raise InvalidFile('expected %d limit states, found %d' %
                              (LS, len(ffs)))
    if ff['format'] == 'continuous':
        attrs['minIML'] = float(imls['minIML'])
        attrs['maxIML'] = float(imls['maxIML'])
        array = numpy.zeros(LS, [('mean', F64), ('stddev', F64)])
        for i, ls, node in zip(range(LS), limit_states, ff[1:]):
            if ls != node['ls']:
                with context(fname, node):
                    raise InvalidFile('expected %s, found' %
                                      (ls, node['ls']))
            array['mean'][i] = node['mean']
            array['stddev'][i] = node['stddev']
    elif ff['format'] == 'discrete':
        attrs['imls'] = valid.positivefloats(~imls)
        valid.check_levels(attrs['imls'], attrs['imt'])
        num_poes = len(attrs['imls'])
        array = numpy.zeros((LS, num_poes))
        for i, ls, node in zip(range(LS), limit_states, ff[1:]):
            with context(fname, node):
                if ls != node['ls']:
                    raise InvalidFile('expected %s, found' %
                                      (ls, node['ls']))
                poes = (~node if isinstance(~node, list)
                        else valid.probabilities(~node))
                if len(poes) != num_poes:
                    raise InvalidFile('expected %s, found' %
                                      (num_poes, len(poes)))
                array[i, :] = poes
    # NB: the format is constrained in nrml.FragilityNode to be either
    # discrete or continuous, there is no third option
    return array, attrs
Example #3
0
def get_vulnerability_functions_05(node, fname):
    """
    :param node:
        a vulnerabilityModel node
    :param fname:
        path of the vulnerability filter
    :returns:
        a dictionary imt, taxonomy -> vulnerability function
    """
    # NB: the IMTs can be duplicated and with different levels, each
    # vulnerability function in a set will get its own levels
    taxonomies = set()
    vmodel = scientific.VulnerabilityModel(**node.attrib)
    # imt, taxonomy -> vulnerability function
    for vfun in node.getnodes('vulnerabilityFunction'):
        with context(fname, vfun):
            imt = vfun.imls['imt']
            imls = numpy.array(~vfun.imls)
            taxonomy = vfun['id']
        if taxonomy in taxonomies:
            raise InvalidFile(
                'Duplicated vulnerabilityFunctionID: %s: %s, line %d' %
                (taxonomy, fname, vfun.lineno))
        if vfun['dist'] == 'PM':
            loss_ratios, probs = [], []
            for probabilities in vfun[1:]:
                loss_ratios.append(probabilities['lr'])
                probs.append(valid.probabilities(~probabilities))
            probs = numpy.array(probs)
            assert probs.shape == (len(loss_ratios), len(imls))
            vmodel[imt, taxonomy] = (
                scientific.VulnerabilityFunctionWithPMF(
                    taxonomy, imt, imls, numpy.array(loss_ratios),
                    probs))  # the seed will be set by readinput.get_risk_model
        else:
            with context(fname, vfun):
                loss_ratios = ~vfun.meanLRs
                coefficients = ~vfun.covLRs
            if len(loss_ratios) != len(imls):
                raise InvalidFile(
                    'There are %d loss ratios, but %d imls: %s, line %d' %
                    (len(loss_ratios), len(imls), fname,
                     vfun.meanLRs.lineno))
            if len(coefficients) != len(imls):
                raise InvalidFile(
                    'There are %d coefficients, but %d imls: %s, '
                    'line %d' % (len(coefficients), len(imls), fname,
                                 vfun.covLRs.lineno))
            with context(fname, vfun):
                vmodel[imt, taxonomy] = scientific.VulnerabilityFunction(
                    taxonomy, imt, imls, loss_ratios, coefficients,
                    vfun['dist'])
    return vmodel
Example #4
0
def get_vulnerability_functions(fname):
    """
    :param fname:
        path of the vulnerability filter
    :returns:
        a dictionary imt, taxonomy -> vulnerability function
    """
    # NB: the IMTs can be duplicated and with different levels, each
    # vulnerability function in a set will get its own levels
    imts = set()
    taxonomies = set()
    vf_dict = {}  # imt, taxonomy -> vulnerability function
    node = nrml.read(fname)
    if node['xmlns'] == nrml.NRML05:
        vmodel = node[0]
        for vfun in vmodel.getnodes('vulnerabilityFunction'):
            with context(fname, vfun):
                imt = vfun.imls['imt']
                imls = numpy.array(~vfun.imls)
                taxonomy = vfun['id']
            if taxonomy in taxonomies:
                raise InvalidFile(
                    'Duplicated vulnerabilityFunctionID: %s: %s, line %d' %
                    (taxonomy, fname, vfun.lineno))
            if vfun['dist'] == 'PM':
                loss_ratios, probs = [], []
                for probabilities in vfun[1:]:
                    loss_ratios.append(probabilities['lr'])
                    probs.append(valid.probabilities(~probabilities))
                probs = numpy.array(probs)
                assert probs.shape == (len(loss_ratios), len(imls))
                vf_dict[imt,
                        taxonomy] = (scientific.VulnerabilityFunctionWithPMF(
                            taxonomy, imt, imls, numpy.array(loss_ratios),
                            probs))
            else:
                with context(fname, vfun):
                    loss_ratios = ~vfun.meanLRs
                    coefficients = ~vfun.covLRs
                if len(loss_ratios) != len(imls):
                    raise InvalidFile(
                        'There are %d loss ratios, but %d imls: %s, line %d' %
                        (len(loss_ratios), len(imls), fname,
                         vfun.meanLRs.lineno))
                if len(coefficients) != len(imls):
                    raise InvalidFile(
                        'There are %d coefficients, but %d imls: %s, '
                        'line %d' % (len(coefficients), len(imls), fname,
                                     vfun.covLRs.lineno))
                with context(fname, vfun):
                    vf_dict[imt, taxonomy] = scientific.VulnerabilityFunction(
                        taxonomy, imt, imls, loss_ratios, coefficients,
                        vfun['dist'])
        return vf_dict
    # otherwise, read the old format (NRML 0.4)
    for vset in read_nodes(fname, filter_vset,
                           nodefactory['vulnerabilityModel']):
        imt_str, imls, min_iml, max_iml, imlUnit = ~vset.IML
        imts.add(imt_str)
        for vfun in vset.getnodes('discreteVulnerability'):
            taxonomy = vfun['vulnerabilityFunctionID']
            if taxonomy in taxonomies:
                raise InvalidFile(
                    'Duplicated vulnerabilityFunctionID: %s: %s, line %d' %
                    (taxonomy, fname, vfun.lineno))
            taxonomies.add(taxonomy)
            with context(fname, vfun):
                loss_ratios = ~vfun.lossRatio
                coefficients = ~vfun.coefficientsVariation
            if len(loss_ratios) != len(imls):
                raise InvalidFile(
                    'There are %d loss ratios, but %d imls: %s, line %d' %
                    (len(loss_ratios), len(imls), fname,
                     vfun.lossRatio.lineno))
            if len(coefficients) != len(imls):
                raise InvalidFile(
                    'There are %d coefficients, but %d imls: %s, line %d' %
                    (len(coefficients), len(imls), fname,
                     vfun.coefficientsVariation.lineno))
            with context(fname, vfun):
                vf_dict[imt_str, taxonomy] = scientific.VulnerabilityFunction(
                    taxonomy, imt_str, imls, loss_ratios, coefficients,
                    vfun['probabilisticDistribution'])
    return vf_dict