1. Introduction
There has been growing interest in global environmental issues such as global warming and the depletion of fossil fuels in recent years. In response, the Japanese government has announced its Basic Energy Plan, aiming to reduce carbon dioxide emissions by 46% or more and increase the ratio of zero-emission power sources from 16% in 2016 to 57% to 61% in 2030. However, due to the effects of the East Japan Earthquake in 2010, nuclear power, one of the zero-emission power sources, is not fully functioning. Therefore, the introduction of Renewable Energy Sources (RES) using clean natural energy such as Photovoltaic (PV) and Wind-power Generators (WGs) is rapidly increasing as an alternative energy source to nuclear power [
1]. As a result, many studies have been conducted to promote the introduction of renewable energy sources [
2,
3]. Therefore, further promotion of the introduction of RES is expected in the future. In particular, the Feed-in Tariff (FIT) system that has been in place since 2012 has increased the amount of PV installed, and it is expected to spread to households as well, promoting its introduction as a distributed power source for local production for local consumption.
A Smart House (SH) has been proposed as a demand-side measure for environmental protection. PV and Heat Pump (HP) water heaters are mainly installed in the SH [
4], and the operating cost (electricity price) in the house can be reduced by applying the Time-of-Use (ToU) price provided by the electric power company [
5,
6]. In this case, the smart house is self-sufficient in energy using PV and supplies the generated power to the loads in the home. In addition, it is also possible to sell the generated surplus power to the power company. This reduces the amount of electricity purchased from the power company on the demand side, and on days with high solar radiation, it is possible to earn revenue from the power sold. Since the East Japan Earthquake mentioned above, energy supply in times of disaster has become an issue, and the introduction of storage batteries into SHs has been proposed. At present, the introduction of storage batteries in the household sector has not progressed due to their high initial cost, but the price is expected to decrease in the future. In addition, for HPs that use electricity for hot water supply, operating costs can be reduced by starting the system during night-time hours when electricity rates are low. As described above, an SH has various advantages and can bring benefits (lower operating costs) to the consumer side. In addition, it is expected to reduce carbon dioxide emissions by promoting the introduction of RES and reducing the amount of purchased electricity, which could benefit the power system operator as well; thus, creating a win–win relationship.
Renewable energy, especially PV, which is currently being introduced in increasing quantities, is changing the shape of the demand curve for electricity, which has a significant impact on the operational planning of thermal generators [
7,
8]. This phenomenon is called the duck curve, and it results in a significant difference between the peak and off-peak demand periods, which reduces the operational efficiency of thermal generators. As a result, the PV output must be curtailed and its capacity cannot be utilized to the fullest. In addition, the introduction of new renewable energies is going to stagnate and the expansion of their introduction might not be realized, and the goals mentioned above would not be reached. As a countermeasure to these problems, load control is well known, in which peak loads are shifted to times when PV output becomes large, and Demand Response (DR) is used to control power consumption by consumers. Load control can be roughly classified into indirect load control and direct load control. In indirect control, consumers control their electricity consumption by providing incentive information such as electricity rates and demand curves from power companies. On the other hand, direct control involves the direct remote control of devices in the home by the power company. This makes it possible to shift the peak load and increase it when the PV output is at maximum. In addition to peak shifting, Demand-side Management (DSM) such as these can also reduce electricity costs by providing superior appliance control. Therefore, DSM is fundamental research in terms of the cost for power system operators and consumers [
9].
For indirect load control, as described above, the power companies use these load controls to reduce peak loads by setting prices for each time period to gain an advantage in power system operation. In this case, customers can reduce the operating cost of the smart house by operating home appliances according to the price setting. In recent years, electricity meters with communication functions such as smart meters have become widespread, and Real-time Pricing (RTP) using these meters has been introduced. This is expected to reduce household electricity bills and improve energy consumption profiles effectively [
10,
11]. However, when the utility company controls the load indirectly as in these cases, there is uncertainty that the effect depends on the electricity consumption behavior of the customer [
12,
13]. Customers’ consumption behavior patterns change depending on their daily lives, seasons, and other factors. Therefore, it is necessary to operate the system in such a way that it can cope with the uncertainty.
On the other hand, direct load control allows the power system operator to control the appliances and adjust the load to achieve a highly efficient generator operation. This is expected to be more effective than indirect control and is considered to be an effective method. However, it may be stressful for customers to have their home appliances operated by a power company. Various factors form customers’ lifestyles, and the operation of appliances that do not match their lifestyles is detrimental to their comfort. In contrast to previous studies, Ref. [
14] proposes a DLC model that takes into account the thermal inertial dynamics model to ensure the thermal comfort of customers. In [
15], a residential load scheduling algorithm based on consumer’s preferences is developed. In [
16], the influence in comfort and uncertainty is expressed as a risk index, which is incorporated into the objective function to solve the optimization problem and guarantee the benefit to the consumer. The authors of Ref. [
17] present an optimization method for scheduling home appliances that are expected to reduce the cost of operation and generation and, in doing so, shift the peak load without causing any discomfort. Thus, in the future, it will be essential to study how to avoid damaging the customer’s lifestyle, and these factors must be taken into account, but this DSM cannot wholly take comfort into account.
This paper proposes an Advanced Direct Load Control (ADLC) model that temporarily shuts down the electric connection between the power grid and the smart house. The ADLC model does not shift the peak load as in the DLC; thus, allowing customers to operate their home appliances freely, which is “ideal” for customers and does not compromise their comfort. In addition, ADLC promotes the self-consumption of PV surplus power, which will not flow into the power grid; thus, improving the problems on the power grid side. In addition, during the shutdown period, self-consumption is expected to reduce the amount of electricity purchased by consumers, thereby decreasing the operating cost. At the same time, the carbon dioxide emission per SH is also reduced, which provides environmental benefits. In this paper, we calculate the operating costs and carbon dioxide emissions and discuss the impact of ADLC, aiming to create benefits for both consumers and power system operators.
The rest of this paper is organized as follows: In
Section 2, we describe the proposed ADLC model. In
Section 3, we present the SH model assumed in this paper. In
Section 4, we present the objective function for operational cost minimization and the constraints considered in the optimization. In
Section 5, we present the simulation conditions that we set up. In
Section 6, the simulation results are presented and discussed.
Section 7 concludes the paper.
2. Advanced Direct Load Control (ADLC)
Among the RES, the mass deployment of PV, in particular, mitigates global warming, but there are also disadvantages. As mentioned above, one of the issues on the power grid side is the duck curve. The duck curve is feared to cause a variety of problems from both economic and environmental perspectives, and RES output curtailment would also be necessary [
18,
19,
20]. This has made it challenging to introduce new renewable energy sources. In order to address these issues, ADLC proposed in this paper is applied to smart houses.
The most important feature of the ADLC model is that the electric connection with the power grid is temporarily interrupted twice: during the daytime when the PV output is high and during the night time when the peak load is high. During the daytime shutdown period, the load demand of households is covered by the PV output, and if surplus power is generated, it is charged into storage batteries to promote private consumption. In this way, the power generated by PV does not flow into the power system during the daytime hours, and the power system as a whole can be given the same effect as PV output suppression. Therefore, the load demand of the entire power system during daytime hours would increase.
During the night-time shutdown period, the smart house is operated using the energy in the storage batteries charged with the surplus PV output during the daytime. This eliminates the need to purchase power from the power grid during the night-time shutdown period; thus, reducing the peak load at night for the power grid as a whole. In addition, since the smart house is operated only with the energy in the storage batteries during the night-time shutdown, the utilization rate of the storage batteries is also expected to improve. These merits mainly affect the power grid operation side and benefit the customer side, since the self-consumption of PV-generated electricity contributes to the reduction in the amount of purchased electricity and reduces the operation cost. Since the ADLC model reduces carbon dioxide emissions on a per-household basis, customers can participate in environmental conservation without adopting a “special” lifestyle.
In
Section 1, we discussed the uncertainty of electricity consumption behavior on the customer side and the customer’s comfort. When indirect control is applied to a smart house, the customer’s consumption behavior affects the effect, and sufficient load shifting may not be realized. In the case of applying direct control to a smart house, the electric power company operates the home appliances installed in the smart house, and the customer must adjust their lifestyle to match the operation of the electric power company, which greatly impairs the comfort of the customer. In contrast, the ADLC model proposed in this paper shuts down the electric connection between the power system and the smart house; thus, modifying the load more reliably than indirect control. In addition, compared to direct control, the operation of home appliances can be tailored to the customer’s preferences and, thus, comfort can be taken into account. At this time, worsening weather conditions or a disaster such as a typhoon would make it difficult to apply ADLC to the operation method. Therefore, it is assumed that ADLC can stop the shutdown upon the request of the consumer. Since typhoons and other natural phenomena are predictable, it is easy for consumers to obtain information about them through weather forecasts. In this way, ALDC is an operational method that can fully satisfy the demands of consumers.
5. Operating Conditions
In this paper, we determined the optimal operation method for controllable loads in a smart house by applying ADLC. Six case studies were considered, and the operational cost and carbon dioxide emissions of each were calculated. A summary of the case studies is given in
Table 1. The simulations in this paper were performed using MATLAB R2020b on a PC with Intel Core i9-10980XE and 64GB of RAM. In the research of DSM, three methods were mainly employed to optimize the scheduling of controllable loads: mathematical programming, a heuristic approach, and meta-heuristic approach [
21]. In this paper, Tabu Search (TS), a meta-heuristic solution method, was employed to solve the optimization problem. Genetic Algorithm (GA) is another well-known method [
22]. TS was adopted in this paper because of its advantages such as having a relatively short computation time compared to other methods. The procedure for solving TS is represented in
Figure 2. First, for any solution
, it searched for multiple neighboring solutions, selected a good solution
from among them, and moved from
to
. Then, it searched for the neighboring solutions again. In this way, the optimal solution was found by repeatedly searching for solutions. One of the biggest problems with meta-heuristic solutions is that they fall into local optimum solutions. In TS, we set up a tab list to avoid this problem. The “tab-list” was a list that stored the solutions we had moved so far, and we avoided the risk by searching for solutions while referring to the tab list. In this paper, a limit was placed on the storage memory of the tabular list, which was updated in order of the oldest solution. The parameters set for applying TS are shown in
Table 2.
5.1. Hot Water Demand
Hot water use is one of the important factors in consumer consumption behavior. In this paper, we assumed that the SH model used hot water twice a day, once in the morning and once in the evening, and the water used in the SH was managed in a tank attached to the HP water heater and supplied to the SH. When the water temperature in the tank was lower than the target temperature, the HP was activated to heat the water. The parameters for hot water use are summarized in
Table 3.
5.2. Weather Classification
In this paper, to reduce the simulation time, we classified the weather conditions and performed simulations for each weather condition to calculate the operational cost. First, we simulated one day in each weather condition (sunny, cloudy, and rainy). Next, the percentage of sunny, cloudy, and rainy days in the target month was calculated based on the maximum solar radiation for each month. We defined a sunny day as one that was 60% or more of the maximum solar radiation in the target month, a cloudy day as one that was 30% or closer to 60%, and a rainy day as one that was less than 30%. This definition determined the number of days in each weather condition and the simulation for each weather condition was used to calculate the monthly operating cost.
The power consumption other than the controllable load assumed in this paper and the PV power output in each weather condition are shown in
Figure 3. The simulations were conducted for each month from January to December, and the simulation results for October were shown as a representative.
5.3. Application of ADLC
ADLC was applied to the SH according to the following rules. An example of ADLC application is shown in
Figure 4.
The shutdown would be performed twice a year, once during the day when PV output was high and once at night when peak load occurred.
The shutdown time per time shall be 2 h (6 time steps).
The interval between the first and second shutdown periods must be at least 2 h.
7. Conclusions
This paper proposed an optimal operation method of a controllable load in an SH with advanced direct load control (ADLC) to minimize the daily operating cost. From the simulation results, the operating cost for one year was calculated and compared with the operating cost in an SH for each case study. ToU prices, set according to the time of day and season, were used to calculate the operational costs. In addition, TS, a meta-heuristic solution method, was adopted as the solution method of the optimization problem to minimize the operation cost, and the operation method of the controllable load, storage battery and HP, were determined. The simulation results showed that it was possible to reduce purchasing power by supplying the surplus power from PV generation to the loads in the SH without selling power and consuming all the power in the SH. In addition, the application of ADLC to the self-consumption SH was found to reduce the operating cost. In addition, carbon dioxide emissions per SH were reduced by reducing the amount of purchased electricity. This showed that self-consumption SHs with ADLCs are environmentally superior; self-consumption in SHs allowed for a more efficient generator operation since the renewable energy-generated power did not flow into the power system. This was expected to reduce the operating costs of the generators and benefit the power supply side as well. Furthermore, electricity consumers would see a decrease in their electricity bills, which would promote the shift to SHs and contribute to the expansion of the introduction of renewable energy.
In the future, the integration of electric vehicles (EVs), detailed HP models, and the uncertainty of PV power generation will be introduced into the simulations. EVs are expected to bring out more potential than their capacity as vehicles by operating them as storage batteries in an SH. This will promote the introduction of EVs and further reduce the progress of global warming. Determining the optimal configuration and capacity of the equipment to be installed in an SH is an important issue to address in the future. In HP, the water is usually divided into two layers in the hot water storage tank at different temperatures. By constructing a detailed HP model, the required power demand in SH can be accurately assumed. In addition, the uncertainty of the PV system must be taken into account because the power generated depends on the weather. This has become an essential issue in the expansion of renewable energy deployment.