Presentation is loading. Please wait.

Presentation is loading. Please wait.

SINTEF Energy Research 1 Remodece meeting January 2007 Nicolai Feilberg.

Similar presentations


Presentation on theme: "SINTEF Energy Research 1 Remodece meeting January 2007 Nicolai Feilberg."— Presentation transcript:

1 SINTEF Energy Research 1 Remodece meeting January 2007 Nicolai Feilberg

2 SINTEF Energy Research 2 WP5 Analysis List of Input data needed for the analysis based on survey/monitoring campaign. Example (Norway) Deliverable D10: Yearly electricity consumption and average specific load curves for each type of appliance, and potential energy savings. Deadline month 32 – summer 2008 Demonstration of the Useload tool

3 SINTEF Energy Research 3 List of the Input data needed from metered customers “Household details” from Questionnaire Location and contact details Name Address /Postal code/phone number Group/stratum data: How many persons live in the household in age groups: Age 12 and less Age 13 to 18 Age 19 to 65 Age more than 65 Education level Max no of years education of a person in household Electricity consumption last year In euros In kWh Building type: Detached houses, row house, apartments Electric space heating Yes/no Electric water heating Yes/no

4 SINTEF Energy Research 4 Input data needed from questionnaires 1 Data needed from questionnaire Average number of appliances used by customer groups No of el. Cookers, fridges, etc No of Lamps of given efficiency in certain room type (room type -> type of use) Define Stratum (group) the object belongs to Defined by “Household details” in questionnaire Person type Main resident is young, single person Families Elderly people Building type of the object: Detached houses, row houses, apartments

5 SINTEF Energy Research 5 Country specific data We have data from the survey population. The survey population have different characteristics compared to the population of the whole country Use data from Statistic bureaus to alter the analysis results to fit with country specific data: Calibration techniques available in Useload Example: Share of students is 30% in sample and 20% in total population. Therefore the weight of the “student” data should be 20/30.

6 SINTEF Energy Research 6 Before starting monitoring Find suitable customer strata: Find groups that have similar behavior regarding presence and patterns of use. Strata must be part of overall national statistics. Example of groups: Main resident is single person Families Elderly people Divide also into types of buildings: Detached houses, row houses, apartments

7 SINTEF Energy Research 7 Example from Norway Questionnaire (Statistics Norway, SSB) Household expenditure survey (energy small part) Customers answers questionnaire on How many appliances they own Sociological data (family size, income etc.) (Size, building type, year of construction etc.) Data is used to find Expected ownership level (multiple) per customer stratum per appliance (next page) Use data from earlier monitoring campaign (this example) Monitored 5-10 appliances at residential customers Load profiles and annual energy demand from Useload tool

8 SINTEF Energy Research 8 Multiplier from questionnaire (SSB) Annual energy from monitoring campaign

9 SINTEF Energy Research 9 Total for Norway 2001: Different building types have different annual energy demand etc.:

10 SINTEF Energy Research 10 What data is stored in a profile? Expected consumption as kWh per hour (kW) during a typical workday, and also per typical weekend/vacation day (next 2 page) For some end-uses we can differ between seasons if necessary, but more metered data is then needed Distribution of recorded data (next page) Used to find confidence intervals from the data material Confidence intervals shrinks for bigger samples Temperature sensitivities kWh per hour/Centigrade (later) To find how some end-uses changes consumption when temperature changes (Space heating and air condition)

11 SINTEF Energy Research 11 Load profile for water heater 14 customers 1000 customers, coincident load

12 SINTEF Energy Research 12 Load profile for typical detached house

13 SINTEF Energy Research 13 Result from Useload simulation Distribution of annual energy demand on different end-uses

14 SINTEF Energy Research 14 Result from Useload simulation Distribution of annual energy demand on different end-uses Result agrees with earlier studies of end-use distribution. The method works!

15 SINTEF Energy Research 15 Result from Useload simulation Distribution of peak power of different end-uses Residual = heating and cooling

16 SINTEF Energy Research 16 Simulation of peak week 2001 (February)

17 SINTEF Energy Research 17 Deliverable D10 “Yearly electricity consumption and average specific load curves for each type of appliance, and potential energy savings.” Deadline month 32 Guideline A guideline will be made so that each participant can make the countribution to the Deliverable. Guide based on Useload Useload will be made available for interested partners.

18 SINTEF Energy Research 18 Contents of D10 For each participant/country For each group of appliances: Electric Space heating/cooling Report / Energy savings potential Electric Water heating Report / Energy savings potential Lighting Report / Energy savings potential Other use of electricity Report the following results for each appliance in group: Yearly electricity consumption /standby consumption Average specific load curves for each type of appliance Potential energy savings

19 SINTEF Energy Research 19 Discussion I Hourly resolutions of load profiles is sufficient for aggregated studies Load profiles could be stored as 10 minutes intervals Metering period 14 days periods/alternating customers – less metering equipment is needed. Divide year into seasons: Winter, Spring, Summer, Fall Differ between into workdays and weekends. A relative low number of customers is available per strata Only 100 customers will be metered. Be sure to cover all main strata of country

20 SINTEF Energy Research 20 Discussion II Load that can be reduced by campaigns are of main interest: Water heating Move load by peak shaving Space heating Switch off/reduce during non presence Lighting Use efficient lighting Standby consumption Identified as (5%) part of some end-uses Phone chargers etc can be switched off when not in use


Download ppt "SINTEF Energy Research 1 Remodece meeting January 2007 Nicolai Feilberg."

Similar presentations


Ads by Google