Title: INTEGRATED PROCESSES FOR TREATMENT OF BERKELEY PIT WATER
1INTEGRATED PROCESSES FOR TREATMENT OF BERKELEY
PIT WATER
2BACKGROUND
- The Berkeley Pit (Butte, Montana) - is currently
filling at a rate of 3 million gallons per day
of acidic, metals laden water - EPA issued a Record of Decision in 1994 the
Berkeley Pit will be allowed to fill until
approximately 2021, at which time the water level
will approach the Critical Water Level
3BACKGROUND (cont.)
- Treatment technologies will be revisited
approximately 2009 treatment required
essentially forever - ROD designated hydroxide precipitation with
aeration (followed by reverse osmosis if
necessary) as preferred treatment technology - Over 1000 tons per day of dewatered sludge will
be produced
4PROJECT CONCEPT
- Value of contained metals presents opportunity
for offsetting treatment costs via product
recovery/resale - Acid mine drainage a worldwide problem
- Project will evaluate both proven and new
technologies for optimizing overall economics of
producing compliant water
5PROJECT CONCEPT (Contd.)
- All aspects of problem will be included
- Challenges
- Distance of Butte, Montana from markets
- Dilute feed stream (though extremely
contaminated) - Low-value base metals present
6CURRENT PROJECT SCOPE
- Develop two optimized flowsheets
- Water Treatment-Only
- Water Treatment-Plus-Product Recovery
- If results economically attractive, pursue pilot
testing of optimized product recovery
process at Berkeley Pit
7CURRENT PROJECT SCOPE (Contd.)
- Major Tasks
- Prepare standardized cost-estimating methodology
- Develop optimization strategy (identify/prioritize
potential process improvements)
8PROJECT STATUS AS OF APRIL 2000
- Work plan complete
- Conceptual design of sludge repository complete
- Cost estimating methodology document complete
- Document verifying technical and cost aspects of
reference flowsheets complete - Optimization strategy in development
- Preliminary optimization efforts underway
(gathering cost/technical data applicable to both
flowsheets)
9PROJECT SCHEDULE
- Final report describing optimized flowsheets due
for publication in November 2000
10IMPROVEMENTS IN ENGINEERED BIOREMEDIATION OF ACID
MINE DRAINAGE Activity III, Project 24
11Project Objectives
- Objectives for improvements of engineered
- features of a passive SRB-bioreactor include
- Selection of media
- Design of a permeability and contact time
enhancing system (PACTES), - Design of an organic carbon replaceable cartridge
system (RCS), - Development of computer software to model SRB
bioremedial processes in the bioreactor.
12Scope of Work
- The scope of work of the project includes seven
tasks - Task I
- Selection of organic carbon media that
- is permeable when saturated with water,
- contains sufficient mass of organic carbon to
minimize treatment rates, and - Could be economically used for passive SRB
bioreactors.
13Scope of Work, cont.
- Task II
- PACTES design, evaluation through a bench test
study, and implementing it in the field. - Task III
- Designing of an organic carbon RCS that would
be easy to install and replace in a bioreactor at
a remote location.
14Scope of Work, cont.
- Task IV
- Development or adaptation of computer software
to model SRB bioremedial processes in the
bioreactor. - This task includes efforts on
- Software development and validation
- Lab experiments for bioreaction kinetics
-
15Scope of Work, cont.
- Task V
- Implementation of the results of the four
previous tasks in a bioreactor constructed for
this purpose. - Task VI
- Project management activities.
- Task VII
- Site selection and characterization
16Status of Work(as of 03/31/00)
- Task I was initiated in February, 2000.
- Data base structure is 60 developed.
- Search of information is advanced approximately
30.
17SLUDGE STABILIZATION
18OBJECTIVE
- Formation, properties and stability of sludge
generated during treatment of acid mine waste
water - Physically and chemically characterize sludges
- Study the stability of sludges created by
treatment techniques - Apply to acid mine water
- Point source
- Non-point source
19Stabilization Techniques will be Developed for
Hazardous Sludge
- Commonly used additives for metallurgical waste
solids - Thermal Processing
- Effective for arsenic bearing waste
- Recovery of metal values or removal of hazardous
constituent/recycling to metallurgical processes - In particular, sulfide sludge
20DEMONSTRATION OF ARSENIC REMOVAL TECHNOLOGY
21OBJECTIVES
- Remove Arsenic from Solution
- Characterize Solid Products
- Determine Stability During Storage
22CONCEPT
- Produce an apatite mineral-like structure with
the substitution of arsenate for phosphate in the
structure
23REMOVAL OF ARSENIC FROM WASTE SOLUTIONS
- WHAT IS WRONG WITH SIMPLE LIME PRECIPITATION??
24EPAs BDAT FOR As BEARING WASTEWATERS
- Ferrihydrite precipitation is an adsorption
phenomena - Potential Problem
- Long-term storage
25ASARCO DEMO RESULTS
- Scrubber Blowdown Water
- gt3,000,000 ppb As to lt10ppb As
- Thickener Overflow
- 6,000 ppb As to lt15 ppb
- Long-term Aging Presently Being Conducted (ASARCO
and Mineral Hill Products)
26MINE WASTE BERKLEY PIT LAKE CHARACTERIZATION
PROJECT
27CHARACTERIZATION PROJECTS
- DEPTH PROFILES
- ORGANIC CARBON
- SRB ACTIVITY IN SEDIMENTS
- SURFACE WATER REACTION KINETICS
28SUMMARY
- Berkley Pit Lake system is complex and requires
much more research to fully understand - Knowledge gained through work on Berkley Pit may
be used on other pit lakes through out the world
29Artificial Neural Networks As An Analysis Tool
for Geochemical Data
30WHY USE NEURAL NETWORK?
TO SORT THROUGH OR ANALYZE VERY LARGE DATA
VOLUMES NNs basically think like the human brain
31ALGAL REMEDIATION DATA OF BERKELEY PIT
- 4 Classes of Data with 15 Samples
- Within each class, 5 subclasses exist with 3
samples each
32Self- Organizing Map
- Groups Data According to Trends Within the Data
- For Algae, the SOM Output Compared to Known Data
Classes - NOTE Neural Networks can also be used to
predict data
33Future Possibilities for NN Analysis of Algae
- Look for behavior trend within Algae species
- Compare similarities and differences
- Train network to recognize different Algae
species and concentrations - Develop network to predict Algae types and
concentrations from pit-water metal concentrations