New to pyomo and to linear optimisation generally. I have an energy allocation problem where I have a fixed amount of energy over a timeframe, I have defined the relevant timeframe as a set:

```
model.t = pyomo.Set(initialize = (supply_unix_ts.index))
```

And the total amount of energy available for each time period is defined as a parameter:

```
model.available_supply = pyomo.Param(model.t, initialize = supply_unix_ts.to_dict(), domain=pyomo.NonNegativeReals)
```

I then have some *requests* to consume the available energy defined as another set:

```
model.r = pyomo.Set(initialize = request_ids)
```

Each request has some specific parameters associated with it, specifically:

- The total amount of energy needed (kWh)
- The maximum power the request can be provided with (kW)
- The earliest time that the request can start to receive energy and the latest time the request can receive energy by (this interval is different for each request and is a subset of t)

```
model.request_earliest_start_time = pyomo.Param(model.r, initialize = request_earliest_start_times_dict, domain=pyomo.NonNegativeReals) #parameter for earliest start times
model.request_latest_end_time = pyomo.Param(model.r, initialize = request_latest_end_time_dict, domain=pyomo.NonNegativeReals) #parameter for latest end times
model.request_max_power_dict = pyomo.Param(model.r, initialize = request_max_power_dict, domain=pyomo.NonNegativeReals) #parameter for max power
model.request_energy_needed_dict = pyomo.Param(model.r, initialize = request_energy_needed_dict, domain=pyomo.NonNegativeReals)
```

I also have another parameter for the sampling period which I need to convert between power and energy in some places to follow.

```
model.sampling_period_dict = pyomo.Param(model.t, initialize = sampling_period_dict, domain=pyomo.NonNegativeReals)
```

My objective is to maximise the utilisation of the available energy, not all requests need to be satisfied.

```
def obj_rule(model):
return sum(model.booked_supply[t] for t in model.t())
model.obj = pyomo.Objective(rule = obj_rule, sense = pyomo.maximize)
```

The decision variables I have are as follows, two of which are binary:

```
model.booked_supply = pyomo.Var(model.t, domain = pyomo.NonNegativeReals) #total supply that is used for a specific time
model.request_status = pyomo.Var(model.t, model.r, domain = pyomo.Binary) #if request is allocated energy during time period t
model.request_satisfied = pyomo.Var(model.r, domain = pyomo.Binary) #if request is fully satisfied
```

I have implemented a constraint to ensure that the booked supply (model.booked_supply) cannot be greater than the available supply for each time period (model.available_supply), and a constraint to set the booked supply equal to the sum of the requests satisfied for each time period.

The problem that I am having is implementing a constraint to say that the total amount of energy allocated to a request should be equal to the total amount of energy needed by that request (model.request_energy_needed_dict), within the interval specified by the request (i.e. between model.request_earliest_start_time and model.request_latest_end_time) i.e. this constraint: Math form of constraint

Where [E_r,L_r] is the time interval relevant for the request.

I have tried looking into lots of different approaches but without any success, since I am new I am unclear about both what the best approach is, and the required syntax to implement this (and if I have defined everything correctly in pyomo).

My two main approaches have been:

Instead of defining [E_r and L_r] (i.e. model.request_earliest_start_time and model.request_latest_end_time ) as parameters, instead try to define these as subsets of the model.t Set and then implement an individual Constraint for each request using the relevant subset. The problem with this is that I have potentially 1000s of requests, I have seen it is possible to dynamically create constraints using ConstraintList but have not seen a way to dynamically create large numbers of individual sets like a SetList (doesn't seem to exist?).

I hoped it would be possible to implement this in a single constraint, but so far have struggled to write down how this should work. Some very naive attempts are below which have generated various errors...

```
def requestMaxEnergyConstraint(model, t, r):
return sum(model.request_confirmed_power[r,t]*model.request_satisfied[r,t]*model.sampling_period_dict[t] for t in model.t if (t > model.request_earliest_start_time[r] and t < model.request_latest_end_time[r]))== model.request_max_energy_dict[r]*model.request_satisfied[r]
```

```
def requestMaxEnergyConstraint(model, t, r):
maxEnergy=0
for r in model.r:
for t in model.t:
if((t > model.request_earliest_start_time[r,t]) and t < (model.request_earliest_start_time[r,t])):
maxEnergy += model.request_confirmed_power[r,t]
return maxEnergy == model.request_max_energy_dict[r]*model.request_satisfied[r]
```

Any advice (ideally a worked example) would be really appreciated on how this can be achieved.