3.1. Fundamental Conditions
The overall completing progress of RPS for a province can be assessed by Equations (1)–(3):
where
is the amount index of RPS completion for province i in year T.
is the proportion index of RPS completion for province
i in year
T. Both are defined according to the latest RPS scheme issued in May 2019.
is the actual provincial accommodation of renewable energy electricity for province
i in year
T, which physically participates in provincial electricity balance.
is calculated by two parts.
is the part of accommodation that is locally generated and consumed.
is the other part of accommodation that is generated outside but consumed locally, and it is set to be negative if the province finally exports non-hydro renewable energy power. As for the market-based accommodation which is complementarily included in RPS completion,
is the total assigned amount of directly-purchased accommodation from all responsible subjects located in province
i.
is the total equivalent amount of accommodation corresponding to the voluntarily green certificates purchased by all subjects located in province
i.
is the part of electricity consumption which is closely related to public welfare and declared to be out of assessment for province
i in year
T.
is the annual electricity consumption in the whole province
i for year
T.
Once the new RPS is strictly implemented, provinces will either raise physical accommodation capability, or encourage responsible subjects to purchase a high enough amount of RPS completion by direct assigned transaction of accommodation and voluntary subscription of TGC. The targeted physical accommodation amount can be simply illustrated by
, as shown in Equation (4). It can be calculated by the distributed provincial RPS target typed as
and electricity consumption. All nearby accommodation approaches proposed in this paper can be adopted by provincial manager and organizer of RPS implementation to make
close to or exceed
.
To calculate the completion potential of new provincial renewable portfolio standards in China based on scenario analysis of nearby accommodation approaches, the following section introduces several basic formulas.
The power output of VRE in province
i at the time
t, typed as
, should meet the requirement of instantaneous power balance in the provincial power system. The power balance is illustrated by Equations (5)–(7):
where
is defined as the provincial consumption load,
is defined as the power output of adjustable generating units which is the sum of adjustable conventional units’ power output typed as
and flexible units’ power output typed as
, and
is the power output of generating units that cannot be adjusted, which is the sum of nuclear power units’ power output typed as
, imported power through trans-provincial transmission lines typed as
, off-managed captive power plants’ power output typed as
, and other uncontrollable power outputs typed as
.
The adjustable conventional units in China are mainly coal-fired power units and hydropower with reservoir storage. The ratio of flexible power units such as natural gas generation and pumped storage in China’s power supply structure is too low to apparently influence peak regulation capability of provincial power system. For simplification, the power output of adjustable generating units mentioned above can be changed into Equation (8).
where
and
are the power output of coal-fired units and hydropower with reservoir storage, respectively.
The power output of hydropower with reservoir storage is usually stable. In addition, curtailment for hydropower is forbidden. The uncontrollable power output showed in Equation (7) is fixed according to plan-based management. Specially, the power of the external transmission line is set according to the daily planned value and could not be adjusted, which means the actual import power must be accommodated by receiving provinces. The basic provincial electricity balance is illustrated in
Table A1. Therefore, the more generating space coal-fired power units assign, the more generating space VRE acquires, which can be illustrated by Equation (9).
This paper assumes that the traditional power system reserve is merely undertaken by coal-fired power units. After deducting the system reserve, the remaining part of coal-fired power units is used for tracking and balancing the fluctuation of VRE’s power output. Other forms of thermal power together with runoff hydropower were not considered unless specially mentioned.
The power output of coal-fired units should be limited between minimum technical output and operated installed capacity after deducting system reserve. This is shown in Equation (10):
where
is defined as the installed capacity of coal-fired units,
represents the average peak regulation depth of all kinds of operated coal-fired power units in province
i at time
t, and
is defined as the system reserve rate undertaken by coal-fired units.
3.2. Calculation of Completion Potential
The maximum generating space for VRE which is assigned from coal-fired power units can be shown in Equation (11), if other conditions remain the same and peak regulation performance is considered only.
This paper merely took nearby accommodation approaches into consideration, while the change of trans-provincial a trans-regional transmission plan could be ignored. Respectively, the imported part of accommodation typed as
remained unchanged. Therefore, the maximum accommodation amount of VRE which was assigned from coal-fired power units could be calculated by integrating both sides, typed as Equation (12).
The peak regulation depth of a single power unit is closely related to its capacity and peak regulation mode. This paper merely considered the low-load peak regulation mode and typed five categories of coal-fired power by the capacity of a single unit. Each category was respectively configured into a unified peak regulation depth. The peak regulation depth of different categories is illustrated in
Table 2. The weighted average peak regulation depth of all kinds of operated coal-fired power units can be calculated. The specific proportion of various coal-fired power units in different provinces is illustrated in
Table A2. The setting for peak regulation depth in
Table 2 is based on the investigation results illustrated in
Table A3.
The calculation setting of the system reserve rate undertaken by coal-fired units is based on the
Notice on issuing early warning of coal and electricity planning and construction risks in 2020 [
18]. In this notice, red warning provinces have obviously-installed redundancy of coal-fired units, and the system reserve rate is set by its boundary value of interval; orange ones have relatively abundant installed capacity, and the system reserve rate is set by average value of interval; green ones have basic balance or a slight gap between power supply and demand, and the system reserve rate is also taken by the boundary value of the interval; those undefined provinces’ system reserve rates are consulted by the reasonable reserve rate. The reserve capacity is calculated with the product of the maximum power generation load and actual system reserve rate. These setting data can be also seen in
Table A2.
For province
i in year
T, the maximum physically-rising potential of the proportion index for RPS completion can be further simplified by Equation (13).
where
is defined as the annual generating electricity of coal-fired power units,
is the annual utilization hour of coal-fired power units,
is the total annual installed capacity of coal-fired power units,
is provincial power system reserve rate,
is the capacity proportion of five different coal-fired units marked by j, and
is its corresponding peak regulation depth.
For further consideration of heating units, also known as cogeneration units or combined heat and power (CHP), the peak regulation of them was uniformly set to be 75%. The provincial capacity proportion of heating units is illustrated in
Table A2. The heating period was set to be 3624 h from November to March of the following year, and the non-heating period was set to be 5136 h from April to October. The actual utilization hours of heating units during these two periods was respectively estimated by their corresponding generating electricity and operated capacity. The capacity proportion of five types of units was assumed to be the same among heating units and non-heating units. Then the formula could vary into Equation (14).
where
is the average utilization hours of all coal-fired units during a non-heating period,
is the average utilization hours of non-heating units during a heating period and
is the average utilization hours of heating units during a heating period,
is the provincial capacity proportion of heating units, and
is the peak regulation depth of heating units during a heating period.
The basic principle of this calculation was to make one variable change as the scenario analysis needed and to keep the other ones to be the same. The above formulas regard peak regulation performance of coal-fired power units as the basic variable, because it is the core factor that restricts nearby accommodation. With these calculations, the prospect for completing a provincial obligated quota in China could be estimated.
3.3. Feasibility and Rationality of the Method
Accurate calculation of VRE absorption capacity is an effective way to improve the level of accommodation, which could theoretically predict the maximum potential for provinces achieving their obligated quotas. At present, the calculation method studied in many literatures can be mainly summarized into two types: The typical daily analysis method and time series production simulation analysis method.
The typical daily analysis method usually selects the extreme situation where the power output of VRE is the largest while the load is the smallest, to determine the conservative capacity of integrated VRE [
19]. The time series production simulation analysis method usually takes the month or year as the calculation time length, and simulates the power and electricity balance of the power grid time by time [
20].
The calculation method proposed in this paper absorbs the advantage in simplification of the first method and avoids the disadvantage in complex data requirements of the second one. It concentrates on the macroscopic average level represented by two kinds of a typical day in a heating period and non-heating period. The basic principle of this method is to control other variables to remain unchanged and to study how the variety of the major variable influences the accommodation. It is especially suitable and more rational to be included in a nearby accommodation framework, due to relatively stable provincial power supply structure and inter-provincial power balance. Though it is idealistic both in assumptions and simplification, the calculation results are valuable enough for analyzing the RPS completion potential from both technical and marketable ways.
In particular, the method proposed in this paper is quite different from those traditional predicting methods. Traditional ones usually predict values of several related variables tied with the targeted variable and give out an estimated value for an exact future date. In contrast, this method keeps these variable values unchangeable except for the studied one prepared for simulation and scenario analysis, and gives out the most ideal evolution for the targeted variable based on present structural data from the actual power system. The differential value for targeted variables between the present actual value and the most ideal one represents the potential remains to be activated. It is not a prediction for an exact date or time series but reflects a present prospect outlook for future development.
Thus, the validity of simulation results on this basis could be proved in another way. As for the traditional methods, the structure validity of their simulation results could be proved by structural validity procedures including boundary adequacy, structure verification, dimensional consistency, parameter verification, and extreme conditions [
21,
22], while the behavioral validity could be demonstrated by comparison between data output from the model and data from the actual power system, and the test procedures include but are not limited to trend comparison and removal [
23,
24,
25]. However, there were no actual reference data for this estimated ideal evolution calculated in this paper; thus, the results could be not easily proved by their comparison. In addition, results were not for an exact future date or time series and could not be validated by fitting historical data with trend extension. Therefore, to guarantee the simulation results calculated from the proposed method complied with structural validity rules, all balance formulas applied in this paper were referred from the Renewable Energy Production Simulation Model developed by the China Electric Power Research Institute (CEPRI) which has been successfully applied in VRE integration optimization and off-grid multi-good micro-grid optimization for nearly ten years [
26]. These formulas illustrate the basic principle that the more generation space released or transferred from thermal power units, the more VRE accommodation and RPS completion become. Under the most ideal circumstance, thermal power units could operate at a lower minimum technical power output and more generation rights to trade between captive thermal power plants and VRE units could be fulfilled, and an explosive boom could happen to VRE accommodation. In addition to these formulas with valid logical structure and consistent dimensions, the basic data for scenario-based case study were collectively sorted out either from official published data books or from investigation of the State Grid Corporation of China [
27,
28,
29,
30,
31,
32,
33,
34]. The adequacy for boundary conditions and parameters could be also guaranteed [
21]. In contrast, to demonstrate the behavioral validity, this paper compared the overlapping variables values acquired from proposed method and similar researches developed by CEPRI and State Grid Energy Research Institute (SGERI) [
26,
35].