Exemplo n.º 1
0
    def disable(self, evaluations, domain):
        #assert not self.disabled
        super(StreamInstance, self).disable(evaluations, domain)
        if not self.external.is_fluent():  # self.fluent_facts:
            if self.external.is_negated() and not self.successes:
                add_fact(evaluations,
                         self.get_blocked_fact(),
                         result=INTERNAL_EVALUATION)
            return

        if self._axiom_predicate is not None:
            return
        index = len(self.external.disabled_instances)
        self.external.disabled_instances.append(self)
        self._axiom_predicate = '_ax{}-{}'.format(
            self.external.blocked_predicate, index)
        add_fact(evaluations,
                 self.get_blocked_fact(),
                 result=INTERNAL_EVALUATION)
        # TODO: allow reporting back which components lead to failure

        static_fact = Fact(self._axiom_predicate, self.external.inputs)
        preconditions = [static_fact] + list(self.fluent_facts)
        derived_fact = Fact(self.external.blocked_predicate,
                            self.external.inputs)
        self._disabled_axiom = make_axiom(parameters=self.external.inputs,
                                          preconditions=preconditions,
                                          derived=derived_fact)
        domain.axioms.append(self._disabled_axiom)
Exemplo n.º 2
0
 def _disable_negated(self, evaluations):
     assert self.external.is_negated()
     if self.successes:
         return
     self.disabled = True
     add_fact(evaluations,
              self.get_blocked_fact(),
              result=INTERNAL_EVALUATION)
Exemplo n.º 3
0
def augment_evaluations(evaluations, future_map):
    for evaluation in list(filter(is_atom, evaluations)):
        name = evaluation.head.function
        if name in future_map:
            new_head = Head(future_map[name], evaluation.head.args)
            new_evaluation = Evaluation(new_head, evaluation.value)
            add_fact(evaluations, fact_from_evaluation(new_evaluation),
                     result=INTERNAL_EVALUATION, complexity=0)
Exemplo n.º 4
0
 def _disable_negated(self, evaluations):
     assert self.external.is_negated
     if self.successful:
         return
     self.disabled = True
     add_fact(evaluations,
              self.get_blocked_fact(),
              result=INTERNAL_EVALUATION,
              complexity=self.compute_complexity(evaluations))
Exemplo n.º 5
0
    def _disable_fluent(self, evaluations, domain):
        assert self.external.is_fluent()
        if self.successes or (self._axiom_predicate is not None):
            return
        self.disabled = True
        index = len(self.external.disabled_instances)
        self.external.disabled_instances.append(self)
        self._axiom_predicate = '_ax{}-{}'.format(self.external.blocked_predicate, index)
        add_fact(evaluations, self.get_blocked_fact(), result=INTERNAL_EVALUATION)
        # TODO: allow reporting back minimum unsatisfiable subset

        static_fact = Fact(self._axiom_predicate, self.external.inputs)
        preconditions = [static_fact] + list(self.fluent_facts)
        derived_fact = Fact(self.external.blocked_predicate, self.external.inputs)
        self._disabled_axiom = make_axiom(
            parameters=self.external.inputs,
            preconditions=preconditions,
            derived=derived_fact)
        domain.axioms.append(self._disabled_axiom)
Exemplo n.º 6
0
def add_plan_constraints(constraints,
                         domain,
                         evaluations,
                         goal_exp,
                         internal=False):
    if (constraints is None) or (constraints.skeletons is None):
        return goal_exp
    import pddl
    # TODO: unify this with the constraint ordering
    # TODO: can constrain to use a plan prefix
    prefix = get_internal_prefix(internal)
    assigned_predicate = ASSIGNED_PREDICATE.format(prefix)
    bound_predicate = BOUND_PREDICATE.format(prefix)
    group_predicate = GROUP_PREDICATE.format(prefix)
    order_predicate = ORDER_PREDICATE.format(prefix)
    new_facts = []
    for group in constraints.groups:
        for value in constraints.groups[group]:
            # TODO: could make all constants groups (like an equality group)
            fact = (group_predicate, to_obj(group), to_obj(value))
            new_facts.append(fact)
    new_actions = []
    new_goals = []
    for num, skeleton in enumerate(constraints.skeletons):
        actions, orders = skeleton
        incoming_orders, _ = neighbors_from_orders(orders)
        order_facts = [(order_predicate, to_obj('n{}'.format(num)),
                        to_obj('t{}'.format(step)))
                       for step in range(len(actions))]
        for step, (name, args) in enumerate(actions):
            # TODO: could also just remove the free parameter from the action
            new_action = deepcopy(
                find_unique(lambda a: a.name == name, domain.actions))
            local_from_global = {
                a: p.name
                for a, p in safe_zip(args, new_action.parameters)
                if is_parameter(a)
            }

            ancestors, descendants = get_ancestors(step,
                                                   orders), get_descendants(
                                                       step, orders)
            parallel = set(range(
                len(actions))) - ancestors - descendants - {step}

            parameters = set(filter(is_parameter, args))
            ancestor_parameters = parameters & set(
                filter(is_parameter,
                       (p for idx in ancestors for p in actions[idx][1])))
            #descendant_parameters = parameters & set(filter(is_parameter, (p for idx in descendants for p in actions[idx][1])))
            parallel_parameters = parameters & set(
                filter(is_parameter,
                       (p for idx in parallel for p in actions[idx][1])))

            #bound_preconditions = [Imply(bound, assigned) for bound, assigned in safe_zip(bound_facts, assigned_facts)]
            bound_condition = pddl.Conjunction([
                pddl.Disjunction(
                    map(fd_from_fact, [
                        Not((bound_predicate, to_constant(p))),
                        (assigned_predicate, to_constant(p),
                         local_from_global[p])
                    ])) for p in parallel_parameters
            ])
            existing_preconditions = [(assigned_predicate, to_constant(p),
                                       local_from_global[p])
                                      for p in ancestor_parameters]

            constant_pairs = [(a, p.name)
                              for a, p in safe_zip(args, new_action.parameters)
                              if is_constant(a)]
            group_preconditions = [
                (group_predicate if is_hashable(a) and
                 (a in constraints.groups) else EQ, to_obj(a), p)
                for a, p in constant_pairs
            ]
            order_preconditions = [
                order_facts[idx] for idx in incoming_orders[step]
            ]
            new_preconditions = existing_preconditions + group_preconditions + order_preconditions + [
                Not(order_facts[step])
            ]
            new_action.precondition = pddl.Conjunction([
                new_action.precondition, bound_condition,
                make_preconditions(new_preconditions)
            ]).simplified()

            new_parameters = parameters - ancestors
            bound_facts = [(bound_predicate, to_constant(p))
                           for p in new_parameters]
            assigned_facts = [(assigned_predicate, to_constant(p),
                               local_from_global[p]) for p in new_parameters]
            new_effects = bound_facts + assigned_facts + [order_facts[step]]
            new_action.effects.extend(make_effects(new_effects))
            # TODO: should also negate the effects of all other sequences here

            new_actions.append(new_action)
            #new_action.dump()
        new_goals.append(
            And(*[order_facts[idx] for idx in incoming_orders[GOAL_INDEX]]))

    add_predicate(domain, make_predicate(order_predicate, ['?num', '?step']))
    if constraints.exact:
        domain.actions[:] = []
    domain.actions.extend(new_actions)
    new_goal_exp = And(goal_exp, Or(*new_goals))
    for fact in new_facts:
        add_fact(evaluations, fact, result=INTERNAL_EVALUATION)
    return new_goal_exp
Exemplo n.º 7
0
def add_plan_constraints(constraints,
                         domain,
                         evaluations,
                         goal_exp,
                         internal=False):
    if (constraints is None) or (constraints.skeletons is None):
        return goal_exp
    import pddl
    # TODO: can search over skeletons first and then fall back
    # TODO: unify this with the constraint ordering
    # TODO: can constrain to use a plan prefix
    prefix = '_' if internal else ''
    assigned_predicate = ASSIGNED_PREDICATE.format(prefix)
    group_predicate = GROUP_PREDICATE.format(prefix)
    order_predicate = ORDER_PREDICATE.format(prefix)
    for group in constraints.groups:
        for value in constraints.groups[group]:
            # TODO: could make all constants groups (like an equality group)
            fact = (group_predicate, to_obj(group), to_obj(value))
            add_fact(evaluations, fact, result=INTERNAL_EVALUATION)
    new_actions = []
    new_goals = []
    for num, skeleton in enumerate(constraints.skeletons):
        # TODO: change the prefix for these
        order_facts = [(order_predicate, to_obj('n{}'.format(num)),
                        to_obj('t{}'.format(step)))
                       for step in range(len(skeleton) + 1)]
        add_fact(evaluations, order_facts[0], result=INTERNAL_EVALUATION)
        new_goals.append(order_facts[-1])
        bound_parameters = set()
        for step, (name, args) in enumerate(skeleton):
            # TODO: could also just remove the free parameter from the action
            new_action = deepcopy(
                find_unique(lambda a: a.name == name, domain.actions))
            constant_pairs = [(a, p.name)
                              for a, p in safe_zip(args, new_action.parameters)
                              if not is_parameter(a) and a != WILD]
            skeleton_parameters = list(filter(is_parameter, args))
            existing_parameters = [
                p for p in skeleton_parameters if p in bound_parameters
            ]
            local_from_global = {
                a: p.name
                for a, p in safe_zip(args, new_action.parameters)
                if is_parameter(a)
            }

            group_preconditions = [
                (group_predicate if is_hashable(a) and
                 (a in constraints.groups) else EQ, to_obj(a), p)
                for a, p in constant_pairs
            ]
            new_preconditions = make_assignment_facts(assigned_predicate, local_from_global, existing_parameters) + \
                                group_preconditions + [order_facts[step]]
            new_action.precondition = pddl.Conjunction([
                new_action.precondition,
                make_preconditions(new_preconditions)
            ]).simplified()

            new_effects = make_assignment_facts(assigned_predicate, local_from_global, skeleton_parameters) \
                          + [Not(order_facts[step]), order_facts[step + 1]]
            new_action.effects.extend(make_effects(new_effects))
            # TODO: should also negate the effects of all other sequences here

            new_actions.append(new_action)
            bound_parameters.update(skeleton_parameters)
            #new_action.dump()
    add_predicate(domain, make_predicate(order_predicate, ['?num', '?step']))
    if constraints.exact:
        domain.actions[:] = []
    domain.actions.extend(new_actions)
    new_goal_exp = And(goal_exp, Or(*new_goals))
    return new_goal_exp