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Special Features of Environmental Surveys to Establishments

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Title: Special Features of Environmental Surveys to Establishments


1
Jorge Saralegui-Gil Environmental Statistics
and Accounts Unit INE. Madrid (Spain)
jsaralegui_at_ine.es Quality Implications of
specific sampling techniques in environmental
surveys
Q2008 Rome July 2008
2
Environmental Statistics (INE, Spain).
3
Water use in Agriculture (I)
  • Mixed Frame
  • River Basin Authorities, (wholesale water,
    abstraction)
  • Irrigators associations (distribution ,
    irrigation techniques, turnover)
  • Agricultural Holdings (crops, self supply,
    costs).
  • Area frame
  • Difficulties to avoid duplicates of water flows
    supplied to agr. holdings.

4
Water use in Agriculture (II)
Estimates combine results of the Survey on Water
Use in Agriculture (INE) , the water use module
within the Survey on Waste Generation in
Agriculture (INE ) and the Area Frame Survey
(Min. of Agric.).
  • - The basic step in the estimation procedure for
    the SWUA uses irrigated regional total area S,
    classified according to the irrigation technique
    k (leaking, sprinkling or gravity) as exogenous
    variable for calibration purposes.
  • A correction c is needed to cope with
    self-supplied water a by holdings which consider
    the externally supplied water a insufficient.

5
Non irrigation water statistics (I)
  • Three flow types (water abstraction, water supply
    and waste water collection and treatment)
    constitute estimation targets for surveys on
    the sector.
  • Considered as public services, its final
    responsibility is entrusted to local
    authorities.
  • Very complex management structure .
  • Ad hoc observation units Water Managers
    (agregations of establishment type units) in a
    domain.
  • Mixed frame for the Survey on Water Supply and
    Treatment The database links territorial
    districts with microdata identification of the
    corresponding CBR units .

6
Non irrigation water statistics (II)
  • Take-all strata H Frame units serving medium
    and large districts.
  • For the remaining water managers (i,j below) a
    ratio estimator is used it is based on the
    number of residents ( p) of the
    municipalities k being served by them (with a
    correction coeffic. c whenever the service is
    shared with other managers) .


7
Sewage Treatment.
Population figures cannot be used as totals for
calibration (coverage unknown )
  • Exogenous (Min. of Env.) Equivalent population
    is used instead to estimate the total
    population receiving the waste water treatment
    service in the domain.
  • The concept of equivalent inhabitant is defined
    as the biodegradable organic load carrying a
    biochemical 5-day oxygen (DBO5) demand of 60 gr.
    of oxygen a day.
  • Equiv. Pop. can be calculated at the micro level
    for responding units (water managers).

8
Waste Generation Surveys (I)
Information needs on waste are approached by the
statistical system in the context of
  • Estimates presented in satellite accounts
    (material flows accounts , satellite accounts on
    waste) .
  • Structural statistics (to produce both
    environmental indicators and reports).
  • Specific sections of sustainable development
    indicators systems.
  • Other fields of waste statistics refer to the
    type of treatment applied to waste, and the
    treatment facilities characteristics.  

9
Waste Generation Surveys (III)
Quality challenges Reporting units
(establishments, holdings ) must cope with a
double coding problem, related to the use of
different classifications.
  • Administrative regulations (particularly
    demanding for hazardous waste) use LoW (List of
    Waste, product oriented) . Statistical system (in
    EU) works with EWC-Stat (activity oriented
    categories
  • Technical difficulties to treat blank cells
    either as a partial non-response or as a zero
    value.
  • Strategic mandates to reduce reporting burden.
    Regional estimates are highly demanded but the
    estimation cannot be efficiently carried out
    using direct estimators based on small samples

10
Waste Generation Surveys (IV)
Estimators of waste type X at the regional level
C are of the post stratified ratio type. An
ancillary variable v is introduced (sales,
production, employment ) whose value is known
for every sample unit i of stratum h in post
stratum A , as well as its exogenous totals from
the active population survey and from the
structural annual business surveys respectively,
as follows

11
Waste Generation Surveys (V)
It becomes necessary for some wastes to make use
of a synthetic estimators based on nationwide
means in order to impute the latter to a post
stratum A within the domain C.

12
Urban Waste (I)
The Frame for the Collection and Treatment of
Urban Waste Survey (UWS hereafter ) consists of
territorial units linked to the
establishment-type units supplying the service
  • Take-all strata coverage amounts to more than a
    40 of the territory as a whole , thus
    estimation-related biases are fairly bounded.
  • As with the sewage treatment, the use of complex
    estimation procedures within sampling strata
    becomes necessary as an exact knowledge of
    territorial coverage for collection of particular
    categories of selective waste is lacking.

13
Urban Waste (II)
  • As far as the distinction urban waste versus
    household waste is concerned, the procedure
    combines estimations from the UWS and from waste
    generation surveys
  • In the waste generation survey questionnaires
    addressed to the service sector establishments
    and institutions , one section concerning the
    destiny of waste is included in order to know
    whether the waste is handed over to either a
    waste municipal manager or to a non-municipal one
    (licensed private managers)
  • In doing so it becomes possible to estimate the
    fraction of waste collected by municipal
    managers, and consequently the amount of a
    particular category of waste generated by
    households, derived from the UWS estimated
    totals.

14
Waste Treatment (I )
  • Perhaps the most important area of waste
    statistics.
  • Two approaches to frame building
    facility-oriented approach the licensed waste
    managers approach.
  • - In a first step, a sample of licensed waste
    managers is drawn- from administrative records
    as provided by the regional environmental
    authorities .
  • - Both the number and total capacity of several
    types of waste treatment facilities are
    externally available for each domain. It is used
    as an ancillary variable when estimating total
    treated waste

15
Waste Treatment (II)
The estimator is of the type
  • x denotes the amount of waste that have been
    treated by manager j of the frame, in stratum h
    by treatment type k. (either recycling, land
    filling, incineration with or without energy
    recovery, etc.) .
  • Design weight w of unit j is adjusted within
    the stratum h by the coefficient of non response
    /out of scope c. t refers to maximum capacity
    for treatment k, as stated for those facilities
    managed by a sampled unit.
  • T refers to total treatment capacity for type
    k, as given by external sources, within the
    estimation domain. 

16
Other environmental statistical operations
  • To estimate the use of hazardous chemical
    products in agriculture Holdings fill out an open
    answer question set where they are inquired on
    the commercial brand, amount, crop and license
    code for each plan protection product used.
  • To obtain estimates at active substance level a
    subsequent computer procedure is carried out by
    merging administrative records of the identified
    ppt .
  • Supply-side environmental protection statistics
    production estimates from samples of
    establishments are to be combined with estimates
    for the demand-side (expenditure) variables,
    along with administrative sources or other
    external information such as data from
    sector-related entrepreneurial associations .

17
Some conclusions (I)
  • Heterogeneous nature of environmental statistical
    operations which lie typically halfway between
    common practices for national accounting and the
    traditional survey-based statistics.
  • In order to avoid double counting,
    underestimates or omissions, when estimating
    physical flows related to generation and
    treatment of either waste or water, work teams
    for environmental surveys have to be able to act
    with high methodological flexibility.
  • They do need to be provided with sufficient
    resources in order to build survey frames and set
    complex designs following mixed procedures,
    which combine statistical registers and
    administrative sources with one or even more
    surveys, in one or several steps.

18
Some conclusions (II)
  • Placing the personnel that carry out
    environmental accounts, indicators and surveys in
    the same technical units turns out to be very
    convenient.
  • Staff in charge of data collection have to be
    aware that physical accounting will still take
    some time until it is familiar to business
    practices, then adapting instruments to this
    (hopefully) transitory scenario is of crucial
    importance for the quality of environmental
    statistics.
  • These facts condition altogether the special
    profile within the statistical system of the
    environmental statistics area that needs to be
    taken into account by the statistical offices any
    time they design their medium or long term
    operating plans.

19

THANK YOU
Quality Implications of specific sampling
techniques in environmental surveys
jsaralegui_at_ine.es. INE . Madrid
Q2008 Rome July 2008
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