I have been working on time series modeling with different types of ANN's on Kaggle. I wanted to find out the rainfall forecast for the next 5 years.

I reffered to a notebook in Kaggle for the code for modeling FNN, TLNN, LSTM, SANN. The link for the public notebook is given below: Kaggle Notebook

I wanted the rainfall forecast for the next 5 years: 2023-2027. No matter how I try I cant seem to get the satisfactory result. However I have got the forecasts for the test data. I tried model.predict() function but it doesnt work. This is a part of the code where we are using LSTM:

```
def create_LSTM(input_nodes, hidden_nodes, output_nodes):
model = Sequential()
model.add(LSTM(hidden_nodes, input_shape=(1, input_nodes)))
model.add(Dense(output_nodes))
model.compile(loss='mean_squared_error', optimizer='adam')
return model
def preprocess_LSTM(data, look_back):
data = np.array(data)[:, 0]
X_train = []
y_train = []
for i in range(data.shape[0]-look_back):
x = data[i:look_back+i][::-1]
y = data[look_back+i]
X_train.append(list(x))
y_train.append(y)
input_seq_for_test = data[i+1:look_back+i+1][::-1]
return X_train, y_train, input_seq_for_test
def forecast_LSTM(model, input_sequence, future_steps):
forecasted_values = []
for i in range(future_steps):
forecasted_value = model.predict(input_sequence)
forecasted_values.append(forecasted_value[0][0])
input_sequence[0][0] = np.append(forecasted_value, input_sequence[0][0][:-1])
def Long_Short_Term_Memory(data, look_back, hidden_nodes, output_nodes, epochs, batch_size, future_steps, scaler):
data = scaler.transform(data)
X_train, y_train, input_seq_for_test_LSTM = preprocess_LSTM(data, look_back)
X_train = np.reshape(X_train, (len(X_train), 1, look_back))
model_LSTM = create_LSTM(input_nodes=look_back, hidden_nodes=hidden_nodes, output_nodes=output_nodes)
plot_keras_model(model_LSTM)
model_LSTM = train_model(model_LSTM, X_train, y_train, epochs, batch_size)
input_seq_for_test_LSTM = np.reshape(input_seq_for_test_LSTM, (1, 1, len(input_seq_for_test_LSTM)))
forecasted_values_LSTM = forecast_LSTM(model_LSTM, input_sequence=input_seq_for_test_LSTM, future_steps=future_steps)
forecasted_values_LSTM = list(scaler.inverse_transform([forecasted_values_LSTM])[0])
return model_LSTM, forecasted_values_LSTM
def get_accuracies_LSTM(rainfall_data, test_rainfall_data, parameters, scaler):
combination_of_params = get_combinations(parameters)
information_LSTM = []
iterator = 0
print('LSTM - Number of combinations: ' + str(len(combination_of_params)))
for param in combination_of_params:
if (iterator+1) != len(combination_of_params):
print(iterator+1, end=' -> ')
else:
print(iterator+1)
iterator = iterator+1
input_nodes = param[0]
hidden_nodes = param[1]
output_nodes = param[2]
epochs = param[3]
batch_size = param[4]
future_steps = param[5]
model_LSTM, forecasted_values_LSTM = Long_Short_Term_Memory(rainfall_data, input_nodes, hidden_nodes, output_nodes, epochs, batch_size, future_steps, scaler)
y_true = test_rainfall_data.ix[:future_steps].Precipitation
mse, mae, mape, rmse = calculate_performance(y_true, forecasted_values_LSTM)
info = list(param) + [mse, mae, rmse] + forecasted_values_LSTM
information_LSTM.append(info)
information_LSTM_df = pd.DataFrame(information_LSTM)
indexes = [str(i) for i in list(range(1, future_steps+1))]
information_LSTM_df.columns = ['look_back', 'hidden_nodes', 'output_nodes', 'epochs', 'batch_size', 'future_steps', 'MSE', 'MAE', 'RMSE'] + indexes
return information_LSTM_df
return forecasted_values
```

I have got the forecast for the test data i.e., 2018-2022 which I'll give belowforecast_test_data

The problem I am facing is to find out the out of sample forecast: that is,

I have monthly rainfall data from 1973 to 2022. I need the forecast for 2023-2027. The code below is for forecasting the test data 2018-2022

```
def forecast_LSTM(model, input_sequence, future_steps):
forecasted_values = []
for i in range(future_steps):
forecasted_value = model.predict(input_sequence)
forecasted_values.append(forecasted_value[0][0])
input_sequence[0][0] = np.append(forecasted_value, input_sequence[0][0][:-1])
```

I have seen a solution in another discussion but i don't think this is applicable as my data is not progressive in nature

```
def predict_LSTM(model, x, future_steps):
pred_values = []
for i in range(future_steps):
pred_values = model.predict(x[-1:])
x = x[:-1] + [pred_values]
return next_pred, x
```

where x is the whole data.

Is there any code to find out the out of sample forecast?